264,038 results on '"Osman, A"'
Search Results
2. Modern Primitive (2020–Ongoing): Ink and Pencil Crayon on Paper
- Author
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Osman, Abdi
- Published
- 2023
3. Integrating Segmenting and Gamification Principles in the Design of Interactive Gamified Programming Assessments for Low Achievers
- Author
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Mahfudzah Othman, Aznoora Osman, Siti Zulaiha Ahmad, and Natrah Abdullah
- Abstract
This paper discusses the design of interactive gamified assessments for an introductory programming course based on the multimedia segmenting principle and gamification. The objective is to develop more engaging online programming assessments for low-achieving students. The general design follows Nielsen's design guidelines and incorporates Zaharias' usability evaluation framework with the motivation to learn. The methodology employed the Successive Approximation Model Version 2 (SAM2), comprising two key phases: preparation and iterative design. In the initial phase, a comparative analysis was performed to determine the design principles. The iterative design phase encompassed the application's design via storyboards, the development of the high-fidelity prototype, and users' reviews. A qualitative approach was adopted, involving a user-centred design (UCD) session through focus group discussions with 12 first-year students from the Diploma of Computer Science program, all of whom were low achievers in programming. The participants need to review and rate the prototype based on the scales of the usability recommendations, which are visual design, content design, navigation, interaction, gamification design, and multimedia design. The results from the UCD session revealed that all participants agreed with the usability recommendations integrated into the interactive gamified programming assessments, with the highest mean score of 5.00.
- Published
- 2024
4. The Recruitment to Dissemination Continuum in Community-based Participatory Research
- Author
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Mohamed, Ahmed A., Ridgeway, Jennifer L., Njeru, Jane W., Molina, Luz E., Ahmed, Yahye A., Goodson, Miriam, Osman, Ahmed, Porraz Capetillo, Graciela D., Nur, Omar, Sia, Irene G., and Wieland, Mark L.
- Published
- 2022
- Full Text
- View/download PDF
5. Factors Affecting Female Labor Force Participation in the Middle East: An Empirical Evidence from Panel Data Approach
- Author
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Bawazir, Abdullah Abdulaziz, Osman, Ahmad Farid, and Aslam, Mohamed
- Published
- 2021
- Full Text
- View/download PDF
6. Plantation Futures
- Author
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Osman, Abdi
- Published
- 2021
7. Shallow Signed Distance Functions for Kinematic Collision Bodies
- Author
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Akar, Osman, Han, Yushan, Chen, Yizhou, Lan, Weixian, Gallagher, Benn, Fedkiw, Ronald, and Teran, Joseph
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Machine Learning - Abstract
We present learning-based implicit shape representations designed for real-time avatar collision queries arising in the simulation of clothing. Signed distance functions (SDFs) have been used for such queries for many years due to their computational efficiency. Recently deep neural networks have been used for implicit shape representations (DeepSDFs) due to their ability to represent multiple shapes with modest memory requirements compared to traditional representations over dense grids. However, the computational expense of DeepSDFs prevents their use in real-time clothing simulation applications. We design a learning-based representation of SDFs for human avatars whoes bodies change shape kinematically due to joint-based skinning. Rather than using a single DeepSDF for the entire avatar, we use a collection of extremely computationally efficient (shallow) neural networks that represent localized deformations arising from changes in body shape induced by the variation of a single joint. This requires a stitching process to combine each shallow SDF in the collection together into one SDF representing the signed closest distance to the boundary of the entire body. To achieve this we augment each shallow SDF with an additional output that resolves whether or not the individual shallow SDF value is referring to a closest point on the boundary of the body, or to a point on the interior of the body (but on the boundary of the individual shallow SDF). Our model is extremely fast and accurate and we demonstrate its applicability with real-time simulation of garments driven by animated characters., Comment: Preprint
- Published
- 2024
8. FedSPD: A Soft-clustering Approach for Personalized Decentralized Federated Learning
- Author
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Lin, I-Cheng, Yagan, Osman, and Joe-Wong, Carlee
- Subjects
Computer Science - Machine Learning - Abstract
Federated learning has recently gained popularity as a framework for distributed clients to collaboratively train a machine learning model using local data. While traditional federated learning relies on a central server for model aggregation, recent advancements adopt a decentralized framework, enabling direct model exchange between clients and eliminating the single point of failure. However, existing decentralized frameworks often assume all clients train a shared model. Personalizing each client's model can enhance performance, especially with heterogeneous client data distributions. We propose FedSPD, an efficient personalized federated learning algorithm for the decentralized setting, and show that it learns accurate models even in low-connectivity networks. To provide theoretical guarantees on convergence, we introduce a clustering-based framework that enables consensus on models for distinct data clusters while personalizing to unique mixtures of these clusters at different clients. This flexibility, allowing selective model updates based on data distribution, substantially reduces communication costs compared to prior work on personalized federated learning in decentralized settings. Experimental results on real-world datasets show that FedSPD outperforms multiple decentralized variants of personalized federated learning algorithms, especially in scenarios with low-connectivity networks.
- Published
- 2024
9. An Integrated Framework for Uncertainty Quantification in High Temperature Gas Cooled Reactors using the HCP Time-dependent Multiphysics code and Dakota toolkit
- Author
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Osman, W., Sadek, A., Altahhan, M. R., Liu, C., Avramova, M., and Ivanov, K.
- Subjects
Physics - Instrumentation and Detectors - Abstract
The High Temperature Reactor Code Package provides sophisticated modeling and simulation capabilities for high temperature gas cooled reactors like the HTR-200 Modul. However, HCP currently lacks integrated methods for uncertainty quantification and sensitivity analysis. This work aims to couple HCP with the DAKOTA toolkit to enable UQ workflows for quantifying how different uncertainties impact HTGR system performance. DAKOTA offers state of the art sampling and analysis methods that will be linked to the HCP time-dependent multiphysics environment. Key input parameters related to manufacturing variability, boundary and initial conditions, and material properties will be defined as uncertain in this study. Both steady state and time-dependent multiphysics simulations will be analyzed to understand the relative importance of uncertainties across different physics phenomena. Output metrics of interest can include anything measured by the HCP code. Results show the HTR-200 Modul design's robustness to input uncertainties related to inlet gas temperature, U-235 enrichment, graphite density, inlet mass flow rate, and reactor power. A pressurized loss of forced cooling transient was simulated against uncertainty in the inlet gas temperature. Results show the maximum fuel temperature is within design limits with a relatively big safety margin even when considering uncertainty in the boundary conditions of the reactor. Future work will expand the analysis to more HCP physics modules and nuclear data uncertainties. By leveraging UQ and sensitivity analysis with the linked HCP/DAKOTA environment, this work will provide valuable new insights into the expected performance variability of HTR systems during normal and off-normal conditions. The framework developed here will aid uncertainty management activities by gas-cooled reactor developers, researchers, and regulators.
- Published
- 2024
10. A Dynamic Spatiotemporal and Network ARCH Model with Common Factors
- Author
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Doğan, Osman, Mattera, Raffaele, Otto, Philipp, and Taşpınar, Süleyman
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Statistics - Methodology ,Economics - Econometrics ,Quantitative Finance - Statistical Finance - Abstract
We introduce a dynamic spatiotemporal volatility model that extends traditional approaches by incorporating spatial, temporal, and spatiotemporal spillover effects, along with volatility-specific observed and latent factors. The model offers a more general network interpretation, making it applicable for studying various types of network spillovers. The primary innovation lies in incorporating volatility-specific latent factors into the dynamic spatiotemporal volatility model. Using Bayesian estimation via the Markov Chain Monte Carlo (MCMC) method, the model offers a robust framework for analyzing the spatial, temporal, and spatiotemporal effects of a log-squared outcome variable on its volatility. We recommend using the deviance information criterion (DIC) and a regularized Bayesian MCMC method to select the number of relevant factors in the model. The model's flexibility is demonstrated through two applications: a spatiotemporal model applied to the U.S. housing market and another applied to financial stock market networks, both highlighting the model's ability to capture varying degrees of interconnectedness. In both applications, we find strong spatial/network interactions with relatively stronger spillover effects in the stock market.
- Published
- 2024
11. All You Need is an Improving Column: Enhancing Column Generation for Parallel Machine Scheduling via Transformers
- Author
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Hijazi, Amira, Ozaltin, Osman, and Uzsoy, Reha
- Subjects
Computer Science - Machine Learning ,Mathematics - Optimization and Control - Abstract
We present a neural network-enhanced column generation (CG) approach for a parallel machine scheduling problem. The proposed approach utilizes an encoder-decoder attention model, namely the transformer and pointer architectures, to develop job sequences with negative reduced cost and thus generate columns to add to the master problem. By training the neural network offline and using it in inference mode to predict negative reduced costs columns, we achieve significant computational time savings compared to dynamic programming (DP). Since the exact DP procedure is used to verify that no further columns with negative reduced cost can be identified at termination, the optimality guarantee of the original CG procedure is preserved. For small to medium-sized instances, our approach achieves an average 45% reduction in computation time compared to solving the subproblems with DP. Furthermore, the model generalizes not only to unseen, larger problem instances from the same probability distribution but also to instances from different probability distributions than those presented at training time. For large-sized instances, the proposed approach achieves an 80% improvement in the objective value in under 500 seconds, demonstrating both its scalability and efficiency.
- Published
- 2024
12. FastSTI: A Fast Conditional Pseudo Numerical Diffusion Model for Spatio-temporal Traffic Data Imputation
- Author
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Cheng, Shaokang, Osman, Nada, Qu, Shiru, and Ballan, Lamberto
- Subjects
Computer Science - Machine Learning - Abstract
High-quality spatiotemporal traffic data is crucial for intelligent transportation systems (ITS) and their data-driven applications. Inevitably, the issue of missing data caused by various disturbances threatens the reliability of data acquisition. Recent studies of diffusion probability models have demonstrated the superiority of deep generative models in imputation tasks by precisely capturing the spatio-temporal correlation of traffic data. One drawback of diffusion models is their slow sampling/denoising process. In this work, we aim to accelerate the imputation process while retaining the performance. We propose a fast conditional diffusion model for spatiotemporal traffic data imputation (FastSTI). To speed up the process yet, obtain better performance, we propose the application of a high-order pseudo-numerical solver. Our method further revs the imputation by introducing a predefined alignment strategy of variance schedule during the sampling process. Evaluating FastSTI on two types of real-world traffic datasets (traffic speed and flow) with different missing data scenarios proves its ability to impute higher-quality samples in only six sampling steps, especially under high missing rates (60\% $\sim$ 90\%). The experimental results illustrate a speed-up of $\textbf{8.3} \times$ faster than the current state-of-the-art model while achieving better performance., Comment: This paper has been accepted by IEEE Transactions on Intelligent Transportation Systems for publication. Permission from IEEE must be obtained for all other uses, in any current or future media
- Published
- 2024
- Full Text
- View/download PDF
13. Continual Learning with Neuromorphic Computing: Theories, Methods, and Applications
- Author
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Minhas, Mishal Fatima, Putra, Rachmad Vidya Wicaksana, Awwad, Falah, Hasan, Osman, and Shafique, Muhammad
- Subjects
Computer Science - Neural and Evolutionary Computing ,Computer Science - Artificial Intelligence ,Computer Science - Machine Learning - Abstract
To adapt to real-world dynamics, intelligent systems need to assimilate new knowledge without catastrophic forgetting, where learning new tasks leads to a degradation in performance on old tasks. To address this, continual learning concept is proposed for enabling autonomous systems to acquire new knowledge and dynamically adapt to changing environments. Specifically, energy-efficient continual learning is needed to ensure the functionality of autonomous systems under tight compute and memory resource budgets (i.e., so-called autonomous embedded systems). Neuromorphic computing, with brain-inspired Spiking Neural Networks (SNNs), offers inherent advantages for enabling low-power/energy continual learning in autonomous embedded systems. In this paper, we comprehensively discuss the foundations and methods for enabling continual learning in neural networks, then analyze the state-of-the-art works considering SNNs. Afterward, comparative analyses of existing methods are conducted while considering crucial design factors, such as network complexity, memory, latency, and power/energy efficiency. We also explore the practical applications that can benefit from SNN-based continual learning and open challenges in real-world scenarios. In this manner, our survey provides valuable insights into the recent advancements of SNN-based continual learning for real-world application use-cases., Comment: This work has been submitted to the IEEE Access for possible publication
- Published
- 2024
14. Time Series Classification of Supraglacial Lakes Evolution over Greenland Ice Sheet
- Author
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Hossain, Emam, Gani, Md Osman, Dunmire, Devon, Subramanian, Aneesh, and Younas, Hammad
- Subjects
Computer Science - Machine Learning - Abstract
The Greenland Ice Sheet (GrIS) has emerged as a significant contributor to global sea level rise, primarily due to increased meltwater runoff. Supraglacial lakes, which form on the ice sheet surface during the summer months, can impact ice sheet dynamics and mass loss; thus, better understanding these lakes' seasonal evolution and dynamics is an important task. This study presents a computationally efficient time series classification approach that uses Gaussian Mixture Models (GMMs) of the Reconstructed Phase Spaces (RPSs) to identify supraglacial lakes based on their seasonal evolution: 1) those that refreeze at the end of the melt season, 2) those that drain during the melt season, and 3) those that become buried, remaining liquid insulated a few meters beneath the surface. Our approach uses time series data from the Sentinel-1 and Sentinel-2 satellites, which utilize microwave and visible radiation, respectively. Evaluated on a GrIS-wide dataset, the RPS-GMM model, trained on a single representative sample per class, achieves 85.46% accuracy with Sentinel-1 data alone and 89.70% with combined Sentinel-1 and Sentinel-2 data. This performance significantly surpasses existing machine learning and deep learning models which require a large training data. The results demonstrate the robustness of the RPS-GMM model in capturing the complex temporal dynamics of supraglacial lakes with minimal training data., Comment: Accepted for publication in 23rd International Conference on Machine Learning and Applications (ICMLA 2024)
- Published
- 2024
15. On the Interplay of Clustering and Evolution in the Emergence of Epidemic Outbreaks
- Author
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Sood, Mansi, Gu, Hejin, Eletreby, Rashad, Kumar, Swarun, Wu, Chai Wah, and Yagan, Osman
- Subjects
Computer Science - Social and Information Networks ,Electrical Engineering and Systems Science - Systems and Control - Abstract
In an increasingly interconnected world, a key scientific challenge is to examine mechanisms that lead to the widespread propagation of contagions, such as misinformation and pathogens, and identify risk factors that can trigger large-scale outbreaks. Underlying both the spread of disease and misinformation epidemics is the evolution of the contagion as it propagates, leading to the emergence of different strains, e.g., through genetic mutations in pathogens and alterations in the information content. Recent studies have revealed that models that do not account for heterogeneity in transmission risks associated with different strains of the circulating contagion can lead to inaccurate predictions. However, existing results on multi-strain spreading assume that the network has a vanishingly small clustering coefficient, whereas clustering is widely known to be a fundamental property of real-world social networks. In this work, we investigate spreading processes that entail evolutionary adaptations on random graphs with tunable clustering and arbitrary degree distributions. We derive a mathematical framework to quantify the epidemic characteristics of a contagion that evolves as it spreads, with the structure of the underlying network as given via arbitrary {\em joint} degree distributions of single-edges and triangles. To the best of our knowledge, our work is the first to jointly analyze the impact of clustering and evolution on the emergence of epidemic outbreaks. We supplement our theoretical finding with numerical simulations and case studies, shedding light on the impact of clustering on contagion spread.
- Published
- 2024
16. Fast unconditional reset and leakage reduction in fixed-frequency transmon qubits
- Author
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Chen, Liangyu, Fors, Simon Pettersson, Yan, Zixian, Ali, Anaida, Abad, Tahereh, Osman, Amr, Moschandreou, Eleftherios, Lienhard, Benjamin, Kosen, Sandoko, Li, Hang-Xi, Shiri, Daryoush, Liu, Tong, Hill, Stefan, Amin, Abdullah-Al, Rehammar, Robert, Dahiya, Mamta, Nylander, Andreas, Rommel, Marcus, Roudsari, Anita Fadavi, Caputo, Marco, Leif, Grönberg, Govenius, Joonas, Dobsicek, Miroslav, Giannelli, Michele Faucci, Kockum, Anton Frisk, Bylander, Jonas, and Tancredi, Giovanna
- Subjects
Quantum Physics - Abstract
The realization of fault-tolerant quantum computing requires the execution of quantum error-correction (QEC) schemes, to mitigate the fragile nature of qubits. In this context, to ensure the success of QEC, a protocol capable of implementing both qubit reset and leakage reduction is highly desirable. We demonstrate such a protocol in an architecture consisting of fixed-frequency transmon qubits pair-wise coupled via tunable couplers -- an architecture that is compatible with the surface code. We use tunable couplers to transfer any undesired qubit excitation to the readout resonator of the qubit, from which this excitation decays into the feedline. In total, the combination of qubit reset, leakage reduction, and coupler reset takes only 83ns to complete. Our reset scheme is fast, unconditional, and achieves fidelities well above 99%, thus enabling fixed-frequency qubit architectures as future implementations of fault-tolerant quantum computers. Our protocol also provides a means to both reduce QEC cycle runtime and improve algorithmic fidelity on quantum computers.
- Published
- 2024
17. Universality for Diagonal Eigenvector Overlaps of non-Hermitian Random Matrices
- Author
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Osman, Mohammed
- Subjects
Mathematics - Probability ,Mathematical Physics - Abstract
We prove the universality of the joint distribution of an eigenvalue and the corresponding diagonal eigenvector overlap, in the bulk and at the edge, for eigenvalues of complex matrices and real eigenvalues of real matrices. As part of the proof we obtain a bound for the least non-zero singular value of $X-z$ when $z$ is an edge eigenvalue and a bound for the inner product between left and right singular vectors of $X-z$ when $|z|=1+O(N^{-1/2})$.
- Published
- 2024
18. Exploring Fine-grained Retail Product Discrimination with Zero-shot Object Classification Using Vision-Language Models
- Author
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Tur, Anil Osman, Conti, Alessandro, Beyan, Cigdem, Boscaini, Davide, Larcher, Roberto, Messelodi, Stefano, Poiesi, Fabio, and Ricci, Elisa
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
In smart retail applications, the large number of products and their frequent turnover necessitate reliable zero-shot object classification methods. The zero-shot assumption is essential to avoid the need for re-training the classifier every time a new product is introduced into stock or an existing product undergoes rebranding. In this paper, we make three key contributions. Firstly, we introduce the MIMEX dataset, comprising 28 distinct product categories. Unlike existing datasets in the literature, MIMEX focuses on fine-grained product classification and includes a diverse range of retail products. Secondly, we benchmark the zero-shot object classification performance of state-of-the-art vision-language models (VLMs) on the proposed MIMEX dataset. Our experiments reveal that these models achieve unsatisfactory fine-grained classification performance, highlighting the need for specialized approaches. Lastly, we propose a novel ensemble approach that integrates embeddings from CLIP and DINOv2 with dimensionality reduction techniques to enhance classification performance. By combining these components, our ensemble approach outperforms VLMs, effectively capturing visual cues crucial for fine-grained product discrimination. Additionally, we introduce a class adaptation method that utilizes visual prototyping with limited samples in scenarios with scarce labeled data, addressing a critical need in retail environments where product variety frequently changes. To encourage further research into zero-shot object classification for smart retail applications, we will release both the MIMEX dataset and benchmark to the research community. Interested researchers can contact the authors for details on the terms and conditions of use. The code is available: https://github.com/AnilOsmanTur/Zero-shot-Retail-Product-Classification., Comment: Accepted at 2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI) conference
- Published
- 2024
19. An Effective Slope Gap Distribution for Lattice Surfaces
- Author
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Osman, Tariq, Southerland, Joshua, and Wang, Jane
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Mathematics - Dynamical Systems ,Mathematics - Geometric Topology ,Mathematics - Number Theory ,37A17, 37D40, 32G15 - Abstract
We prove an effective slope gap distribution result first for the square torus and then for general lattice translation surfaces. As a corollary, we obtain a dynamical proof for an effective gap distribution result for the Farey fractions. As an intermediate step, we prove an effective equidistribution result for the intersection points of long horocycles with a particular transversal of the horocycle flow in $\mathrm{SL}_2 (\mathbb R)/\Gamma$ where $\Gamma$ is a lattice., Comment: 37 pages, 3 figures
- Published
- 2024
20. Investigating the Impact of Randomness on Reproducibility in Computer Vision: A Study on Applications in Civil Engineering and Medicine
- Author
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Eryılmaz, Bahadır, Koraş, Osman Alperen, Schlötterer, Jörg, and Seifert, Christin
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence - Abstract
Reproducibility is essential for scientific research. However, in computer vision, achieving consistent results is challenging due to various factors. One influential, yet often unrecognized, factor is CUDA-induced randomness. Despite CUDA's advantages for accelerating algorithm execution on GPUs, if not controlled, its behavior across multiple executions remains non-deterministic. While reproducibility issues in ML being researched, the implications of CUDA-induced randomness in application are yet to be understood. Our investigation focuses on this randomness across one standard benchmark dataset and two real-world datasets in an isolated environment. Our results show that CUDA-induced randomness can account for differences up to 4.77% in performance scores. We find that managing this variability for reproducibility may entail increased runtime or reduce performance, but that disadvantages are not as significant as reported in previous studies.
- Published
- 2024
21. Crystal Structure Determination via Inverse EXAFS Analysis: A Comparative Study Utilizing the Demeter Software Package
- Author
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Ozkendir, Osman Murat
- Subjects
Condensed Matter - Materials Science - Abstract
This study introduces a novel approach for crystal structure analysis, utilizing Inverse EXAFS Analysis (IEA). To assess the reliability of IEA, we applied it to various experimentally studied materials, including LiCrO2 and CuFeO2. Our findings demonstrate that IEA offers a promising alternative to traditional techniques like XRD, particularly in cases where instrumentation or crystal structure defects pose challenges. IEA effectively revealed the crystal structures of both LiCrO2 and CuFeO2, demonstrating its ability to accurately characterize complex materials. The technique's potential to enhance XAFS data analysis is significant, providing researchers with a valuable tool for crystal structure determination. Future developments in IEA could further expand its capabilities and make it a more accessible and efficient method for materials scientists.
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- 2024
22. Pushing Joint Image Denoising and Classification to the Edge
- Author
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Markhorst, Thomas C, van Gemert, Jan C, and Kayhan, Osman S
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Electrical Engineering and Systems Science - Image and Video Processing - Abstract
In this paper, we jointly combine image classification and image denoising, aiming to enhance human perception of noisy images captured by edge devices, like low-light security cameras. In such settings, it is important to retain the ability of humans to verify the automatic classification decision and thus jointly denoise the image to enhance human perception. Since edge devices have little computational power, we explicitly optimize for efficiency by proposing a novel architecture that integrates the two tasks. Additionally, we alter a Neural Architecture Search (NAS) method, which searches for classifiers to search for the integrated model while optimizing for a target latency, classification accuracy, and denoising performance. The NAS architectures outperform our manually designed alternatives in both denoising and classification, offering a significant improvement to human perception. Our approach empowers users to construct architectures tailored to domains like medical imaging, surveillance systems, and industrial inspections., Comment: Accepted paper at the ECCV 2024 workshop on Advances in Image Manipulation (AIM)
- Published
- 2024
23. Laser Activation of Single Group-IV Colour Centres in Diamond
- Author
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Cheng, Xingrui, Thurn, Andreas, Chen, Guangzhao, Jones, Gareth S., Coke, Maddison, Adshead, Mason, Michaels, Cathryn P., Balci, Osman, Ferrari, Andrea C., Atatüre, Mete, Curry, Richard, Smith, Jason M., Salter, Patrick S., and Gangloff, Dorian A.
- Subjects
Quantum Physics ,Condensed Matter - Materials Science - Abstract
Spin-photon interfaces based on group-IV colour centres in diamond offer a promising platform for quantum networks. A key challenge in the field is realizing precise single-defect positioning and activation, which is crucial for scalable device fabrication. Here we address this problem by demonstrating a two-step fabrication method for tin vacancy (SnV-) centres that uses site-controlled ion implantation followed by local femtosecond laser annealing with in-situ spectral monitoring. The ion implantation is performed with sub-50 nm resolution and a dosage that is controlled from hundreds of ions down to single ions per site, limited by Poissonian statistics. Using this approach, we successfully demonstrate site-selective creation and modification of single SnV- centres. The technique opens a window onto materials tuning at the single defect level, and provides new insight into defect structures and dynamics during the annealing process. While demonstrated for SnV- centres, this versatile approach can be readily generalised to other implanted colour centres in diamond and wide-bandgap materials., Comment: 10 pages, 4 figures, methods, and supplementary information
- Published
- 2024
24. Jump stochastic differential equations for the characterisation of the Bragg peak in proton beam radiotherapy
- Author
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Crossley, Alastair, Habermann, Karen, Horton, Emma, Koskela, Jere, Kyprianou, Andreas E., and Osman, Sarah
- Subjects
Physics - Medical Physics ,Mathematics - Probability - Abstract
Proton beam radiotherapy stands at the forefront of precision cancer treatment, leveraging the unique physical interactions of proton beams with human tissue to deliver minimal dose upon entry and deposit the therapeutic dose precisely at the so-called Bragg peak, with no residual dose beyond this point. The Bragg peak is the characteristic maximum that occurs when plotting the curve describing the rate of energy deposition along the length of the proton beam. Moreover, as a natural phenomenon, it is caused by an increase in the rate of nuclear interactions of protons as their energy decreases. From an analytical perspective, Bortfeld proposed a parametric family of curves that can be accurately calibrated to data replicating the Bragg peak in one dimension. We build, from first principles, the very first mathematical model describing the energy deposition of protons. Our approach uses stochastic differential equations and affords us the luxury of defining the natural analogue of the Bragg curve in two or three dimensions. This work is purely theoretical and provides a new mathematical framework which is capable of encompassing models built using Geant4 Monte Carlo, at one extreme, to pencil beam calculations with Bortfeld curves at the other.
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- 2024
25. ZTF SN Ia DR2: Overview
- Author
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Rigault, Mickael, Smith, Mathew, Goobar, Ariel, Maguire, Kate, Dimitriadis, Georgios, Burgaz, Umut, Dhawan, Suhail, Sollerman, Jesper, Regnault, Nicolas, Kowalski, Marek, Amenouche, Melissa, Aubert, Marie, Barjou-Delayre, Chloé, Bautista, Julian, Bloom, Josh S., Carreres, Bastien, Chen, Tracy X., Copin, Yannick, Deckers, Maxime, Fouchez, Dominique, Fremling, Christoffer, Galbany, Lluis, Ginolin, Madeleine, Graham, Matthew, Kasliwal, Mancy M., Kenworthy, W. D'Arcy, Kim, Young-Lo, Kuhn, Dylan, Masci, Frank F., Müller-Bravo, Tomas, Miller, Adam, Johansson, Joel, Nordin, Jakob, Nugent, Peter, Andreoni, Igor, Bellm, Eric, Betoule, Marc, Osman, Mahmoud, Perley, Dan, Popovic, Brodie, Rosnet, Philippe, Rosselli, Damiano, Ruppin, Florian, Senzel, Robert, Rusholme, Ben, Schweyer, Tassilo, Terwel, Jacco H., Townsend, Alice, Tzanidakis, Andy, Wold, Avery, Purdum, Josiah, Qin, Yu-Jing, Racine, Benjamin, Reusch, Simeon, Riddle, Reed, and Yan, Lin
- Subjects
Astrophysics - Cosmology and Nongalactic Astrophysics ,Astrophysics - High Energy Astrophysical Phenomena - Abstract
We present the first homogeneous release of several thousand Type Ia supernovae (SNe Ia), all having spectroscopic classification, and spectroscopic redshifts for half the sample. This release, named the "DR2", contains 3628 nearby (z < 0.3) SNe Ia discovered, followed and classified by the Zwicky Transient Facility survey between March 2018 and December 2020. Of these, 3000 have good-to-excellent sampling and 2667 pass standard cosmology light-curve quality cuts. This release is thus the largest SN Ia release to date, increasing by an order of magnitude the number of well characterized low-redshift objects. With the "DR2", we also provide a volume-limited (z < 0.06) sample of nearly a thousand SNe Ia. With such a large, homogeneous and well controlled dataset, we are studying key current questions on SN cosmology, such as the linearity SNe Ia standardization, the SN and host dependencies, the diversity of the SN Ia population, and the accuracy of the current light-curve modeling. These, and more, are studied in detail in a series of articles associated with this release. Alongside the SN Ia parameters, we publish our force-photometry gri-band light curves, 5138 spectra, local and global host properties, observing logs, and a python tool to ease use and access of these data. The photometric accuracy of the "DR2" is not yet suited for cosmological parameter inference, which will follow as "DR2.5" release. We nonetheless demonstrate that the multi-thousand SN Ia Hubble Diagram has a typical 0.15 mag scatter., Comment: ZTF SN Ia DR2 release paper. Submitted to A&A (ZTF DR2 Special Issue). Already 1 response to referee
- Published
- 2024
26. Electronic Assessment Anxiety Scale: Development, Validity and Reliability
- Author
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Osman Tat and Abdullah Faruk Kilic
- Abstract
The widespread availability of internet access in daily life has resulted in a greater acceptance of online assessment methods. E-assessment platforms offer various features such as randomizing questions and answers, utilizing extensive question banks, setting time limits, and managing access during online exams. Electronic assessment enables real-time monitoring, customization, and scalability of feedback, benefiting students, academic staff, and administrative personnel. However, students encounter specific challenges in the electronic assessment environments. These challenges include limited control over test settings and the isolated nature of taking exams without peers. Furthermore, the technological proficiency of both instructors and students, along with resource constraints (computers, mobile devices, internet), can impede the effective utilization of these assessment tools. Technical issues like slow internet connection or disconnections can have significant consequences, especially in online exams, posing difficulties for corrections. The main goal of this study is to develop a Likert-type scale capable of measuring anxiety related to technical issues, social isolation, and the test interface experienced in e-assessment contexts. The study consists of two separate groups: the first group comprising 359 participants and the second group consisting of 356 participants. Both groups include undergraduate and pedagogical formation certificate program students from a university in the Eastern Anatolia Region of Turkiye. Construct validity was assessed through exploratory and confirmatory factor analyses. Item parameters were examined using item analysis based on classical test theory. As a result of the study, a two-factor scale structure comprising 21 items measuring social and technical anxiety was developed. These two dimensions account for 59.89% of the total variance. The Cronbach's alpha coefficient for the entire scale was 0.93, the McDonald's omega coefficient was 0.93, and the construct reliability was 0.99.
- Published
- 2024
27. Evaluation of the Teaching Profession on the Basis of Practitioners within the Framework of Modern Education and Training Needs: Erzurum Province Example
- Author
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Mustafa Çagri Engin, Ali Osman Engin, Basaran Gençdogan, and Eda Alemdar Çankaya
- Abstract
The teaching profession is a profession that must be practiced at a professional level as predicted by new education and training technologies and human psychology. It is necessary to look at the competency areas that make the teaching profession different from other professional fields. These competence areas are: 1- It must be top-level and updatable field information. As it is known, humanity has not yet reached the knowledge of the immutable absolute truth of yesterday, today and tomorrow in the name of positive sciences. Knowledge is relative and constantly changing. 2- Teaching profession knowledge: Pedagogical formation knowledge is meant here. 3- Knowledge of general and local culture: The teacher must be a communication expert at a professional level. For this purpose, healthy communication with the student is expected. The tool to be used here is knowledge of general and local culture. Guidance to students depends on this. 4- Teachers must devote themselves to their work and develop a sense of belonging, and they must enjoy and be satisfied with this professional process. Here is this dimension; It is essentially the spirit of amateurism, aspiring to burn in order to enlighten. In this study, teachers' opinions on the current situation regarding the teaching profession were evaluated within the framework of these competencies. For this purpose, this study was designed descriptively; the "Teacher Self-Evaluation Survey" was used as a data collection tool. This survey; in the annex of the MEB Teacher Performance Evaluation and Candidate Teacher Work and Procedures Regulation (Draft) is a "Teacher Self-Evaluation Survey" and was used because it is available for public use. The survey consists of 50 items and options such as 1- Very little, 2- Little, 3- Medium, 4- Good and 5- Very good. The same survey was also used by teachers to evaluate teachers by adapting the expressions and comparisons were made. The data obtained through the survey was evaluated with arithmetic mean, standard deviation and "t" test for independent samples, and generalizations and appropriate comments were made.
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- 2024
28. Exploring the Interaction between Learning Styles and Mathematics Anxiety among Secondary School Students: A Correlational Study in Southern Malaysia
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Nur Aini Khoo, Nurdiana Yasmin Jamaluddin, Sharifah Osman, and Achmad Buchori
- Abstract
Mathematics is a subject that is extensively used in real-life situations, but it has been found to be a difficult subject to master. Accordingly, mathematics anxiety has been found to be highly prevalent in students' lives, whereby learning styles have been underlined as one of the factors that may impact attainment of mathematics skills. This study aims to determine the relationship between learning styles and mathematics anxiety. The correlational study was conducted by using questionnaire adapted from Dunn and Dunn Model and Mathematics Anxiety Scale; involving 389 secondary school students located in the southern region of Malaysia. The study's findings revealed a positive correlation and distinguished between learning styles and mathematics anxiety. It shows that learning styles have an impact on mathematics anxiety. Hence, this study helps the students to embrace and improve their learning styles to minimize the level of anxiety towards mathematics, while the teachers may find it useful in guiding the students to control their mathematics anxiety.
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- 2024
29. Impact of Online Learning Interactive Experience on Language Learners' Emotional Engagement
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Lijuan Han, Siti Zuraidah Md Osman, and Jing Che
- Abstract
Students' emotional engagement in the context of second language and foreign language classrooms can be seen as a multidimensional construct to include cognitive, behavioral, social, and emotional dimensions of engagement. In Applied linguistics research, however, the term "engagement" is shared intuitively and optimally for language learning. The aim of this study was to take a step forward and investigate the extent of emotional engagement in online learning environments, and whether such emotional engagement can be used as a quantitative indicator to measure the degree of students' emotional engagement in behavioral, cognitive and social interaction among language learners. The study employed a mixed method research design, with data collected through literature research, questionnaire survey, and in-depth interviews. The findings of the study revealed that online learning interactive experience was significantly and positively correlated with language learners' emotional engagement, particularly due to its ease of use, interactive content, and design. The study also found that the online learning experience indirectly affected emotional engagement by increasing students' motivation and interest in learning. Finally, the study also found factors such as gender, grade level and subject influencing the relationship between the interactive online learning experience and emotional engagement. These findings reveal the positive impact of online learning interactive experiences on language learners' emotional engagement and highlight the mediating role of motivation and interest in learning. The study recommends devising such strategies that enhance language students' learning engagement in online learning environments and facilitate their participation in the learning process. These findings have implications in the form of improvement of language learners' learning experience and emotional engagement, which can also enhance their academic performance.
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- 2024
30. The Effect of Educational Robots on Primary Schools' Mathematics Learning Achievement, Interest, and Attitude
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Parameshvaran Varaman, Jeya Amantha Kumar, Siti Nazleen Abdul Rabu, and Sharifah Osman
- Abstract
Educational robotics (ER) is a constructivist approach to education that promotes experiential learning through actual activities for teaching and learning science, technology, engineering, and mathematics (STEM) subjects. Empirical findings have indicated that primary school students have limited interest in learning mathematics due to the inability to rationalize real-world applications without practical application. Therefore, this study aims to determine the implications of using ER to evaluate their effect on primary school students' mathematics learning achievement, interest, and attitude. A total of 40 respondents from year five participated in this quasi-experimental study that explored the difference between using ER and PowerPoint hands-on methods as instructional approaches to complement teaching and learning. The findings indicated that ER improved mathematics learning achievement and perceived interest with a high effect size, and students also indicated a positive attitude toward using ER to aid in learning mathematics.
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- 2024
31. The Effect of Therapeutic Game Education on Physical Health in Children with Back Muscle Weakness
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Osman Sengül, O. V. Kozyreva, and Umut Davut Basoglu
- Abstract
The aim of this study was to investigate the effect of therapeutic play training on physical health in 10-12 year old children with back muscle weakness. Experimental research model was used in the study. According to the results of the Functional Movement Screening test, 16 children (8 Study, 8 Control) with back muscle weakness were included in the study as participants. According to the pre-test analysis results, children with weak back muscles were given therapeutic play training with 7 different games adapted to increase healthy posture and physical development for 8 weeks and 3 days a week. At the end of the therapeutic game education application process, the FMS test (post-test) was administered to the children again and the results were recorded. The groups were homogeneously distributed, independent sample t-test was used to determine the difference between the research and control groups, and paired sample t-test was used to compare the data within groups. All statistical values obtained were evaluated at 95% confidence interval and significance was evaluated at p<0.05 level. According to the findings obtained from the study, a statistically significant difference was found when the FMS pre-test-post-test results of the children in the study group, in which therapeutic games were applied, were analyzed (p<0.05). As a result of the FMS pre-test before the education program was started, it was determined that 7 of the 8 participants, who could not reach a sufficient score and whose back muscles were found to be weak, reached a sufficient score according to the FMS post-test results after the applications, and only 1 participant showed positive development although he could not get a sufficient score. When the FMS pre-post test results applied to the control group were examined, it was determined that there was no statistically significant difference p>0.05.
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- 2024
32. An Analysis of the Concept of Water in Secondary School Biology Textbooks
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Musa Dikmenli, Vedat Kadir Ozkan, Selda Kilic, and Osman Cardak
- Abstract
As a result of human beings' activities to dominate nature and transform it for their own benefit as they continue to advance in science and technology, environmental problems such as climate change have become the biggest threat faced by the biosphere in the current century. One of the biggest problems of humanity today is the scarcity of water resources. It is important to reveal the meanings attributed to the concept of water in biology textbooks in order to identify and eliminate the deficiencies or gaps between the concepts related to the subject. The main purpose of this study is to analyze how the concept of water is presented in secondary school biology textbooks. In line with this purpose, answers to the following questions were sought: What biological concepts is water associated with in biology textbooks and how often is it used? Under which categories can the concept of water be classified in biology textbooks? In the study, document analysis was conducted on four biology textbooks published by the Ministry of National Education to be taught in high schools in the 2023-2024 academic year. A qualitative methodology based on inductive logic was used to analyze the data. How water is emphasized in biology textbooks was discussed, and categories were developed to conceptualize explanations about water. These categories were: water as a substance in the structure of organisms, water as a habitat for organisms, water as a substance involved in chemical reactions, water as a human health factor, water as an essential requirement for organisms, water as an environmental problem factor and water as a scarcity factor. According to the results of the textbook content analysis, it was seen that the relationships between water and health concepts in the category of water as a human health factor were well structured. In the study, it was seen that the concept of water was presented in accordance with the target achievements in line with the secondary school biology course curriculum and that the key concepts were given literally. However, it was revealed that the concept of water in textbooks should be structured according to the principles of the systems thinking approach.
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- 2024
33. The Effect of Family Education Program on Paternity Role and Children's Play Skills
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Osman Salci and Sehnaz Ceylan
- Abstract
The objective of the study was to evaluate the effects of fathers' participation in the Father Support Education Programme on their perception of their role as fathers and the development of play skills in their children. The study sample comprised 40 fathers whose children, aged 5 and 6, were enrolled in independent pre-schools located in the city centre of Bartin. The experimental design of pre-test and post-test control group was adopted to facilitate the study. All technical terms were defined when first used. The study comprised 20 fathers, who were divided into control and study groups. Fathers in the study group received the Father Support Education Program over a period of 10 weeks, while no education program was provided to the control group. Information was collected using the "Personal Information Form," "Father Role Perception Scale (FRPS)," and "Game Skills Assessment Scale (PSAS)." The research's quantitative data was analysed using the SPSS (Statistical Package for Social Sciences) programme for Windows 22.0. To compare continuous data between two independent groups, the t-test was employed. The analysis established that following the educational programme, fathers in the study group exhibited a significant difference between their pre-test and post-test mean scores for their roles in their children's play skills. It was found that the Father Support Education Programme had a positive impact on fathers' roles and the development of children's play skills.
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- 2024
34. Reflections of 'Use of Comics in Social Studies Education' Course: The Opinion and Experiences of Teachers
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Genç Osman I?lhan and Maide Sin
- Abstract
It is well known that a quality teacher education is necessary for qualified education. Teachers must be well-trained in multiple areas and have an open-minded structure. They must develop strategies based on the lesson and students, which needs effective material development and use. The materials to be used could be prepared by others and can be incorporated into the classroom setting or teachers could design and present them to students, which is essential for the quality of instruction. When a teacher creates and effectively employs instructional materials, his/her self-confidence will increase and teaching will be enriched and made easier. Comics is one of those materials enriching classroom. This study seeks to elucidate the perspectives and experiences of teachers who took course "The Use of Comics in Social Studies Education" on generating comics as educational materials. The instructor of the relevant course designed and implemented it for the first time in 2019. This is the first and only course of its kind in Turkey. It is an elective graduate course at Yildiz Technical University Faculty of Education, Istanbul, Turkey. The purpose of the courses is to introduce comics, explain the use of comics as an educational resource, and enhance the professional skills and competencies of teachers and teacher candidates. In this study, teachers who completed the course at the master's level were examined. The study group consisted of twelve social studies teachers who took the course between 2019 and 2022, when it was offered for the first time. As a qualitative study, interviews were utilised to collect the data, then analysed through content analysis. The research revealed that the course "The Use of Comics in Social Studies Education" contributed positively to the academic and professional experiences of teachers. It has been determined that comics, as a medium, had positive effects on the professional experience of the participants, such as increasing student motivation, enabling learning while having fun, facilitating permanent learning, contributing to the development of empathy skills, and encouraging the formation of reading habits.
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- 2024
35. Exploring Default-Interventionist Interaction of Thinking Activity Types on Probability Problem-Solving
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Susiswo, Puguh Darmawan, Wasilatul Murtafiah, and Sharifah Osman
- Abstract
This research aims to determine the thinking activity types dominated by a mental process in producing answers characterized by automatic, unconscious, and subjective-empirical processes (system 1) in solving problems so that the default-interventionist interaction occurs. This research novelty is the formulation of the contents and thinking activity arrangement adapted to students' thinking when solving problems. The problem used in this research is a mathematical problem that triggers students to produce answers quickly with confidence that the answers are correct at a high level. Another problem is about probability because the mode of occurrence of students' learning difficulties at the secondary school level occurs when learning the concept of probability. This is qualitative research with a case study approach. The research subjects were students of Mathematics Education in semester 1. The results showed that thinking activity one could condition the occurrence of type 1 default-interventionist interaction. Thinking activity two could condition the occurrence of type 2 default-interventionist interaction. Thinking activity three could condition the occurrence of type 3 default-interventionist interaction. This research concluded that the default-interventionist interaction occurred because the content and arrangement of the thinking activity conditioned the subjects to pay attention to information gradually and change the subjects' beliefs. Lecturers were recommended to produce, develop, and research thinking activities on topics other than probability at various levels of education. The default-interventionist interaction was essential to be conditioned when system one dominated students' thinking, causing difficulties.
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- 2024
36. The Views of Students Regarding the Use of Virtual Reality Applications in Elementary Science Classes
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Osman Urhan and Ercan Akpinar
- Abstract
Recently, Virtual reality (VR) technologies have started to be used increasingly in the field of education, as in many other fields. With the widespread use of virtual reality applications, there is a need to investigate the effects of virtual reality applications in the field of education. The results obtained from these researches can contribute to the creation of effective and efficient virtual reality-supported learning environments. VR applications, one of the technology-supported learning environments, come to the forefront to help students learn concepts more easily and permanently. Since VR is very new and not a common practice in classrooms yet, it is necessary and important to investigate how VR can be used in science lessons and students' views on these practices. The main goals of this study were to develop the Virtual Reality Solar System Model (VRSSM) for the unit "Sun System and Eclipses" for the 6th grade students and to find out what the students think about using virtual reality applications in science classes. This is a qualitative study and 16 students participated in this study and used the VRSSM. The semi-structured interview form was used as a data collection tool. The data was analyzed using content and descriptive analysis. The results of this research revealed that the students want VR to be used not only in science lessons but also in other lessons, they think that the knowledge they have gained is permanent and that they believe that this application can increase their science achievement. Additionally, students think that the application increases their interest in science lessons and affects their learning positively. Therefore, it is expected that the results of this research will lead to the creation and implementation of three-dimensional virtual reality learning environments related to various subjects and levels of science teaching.
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- 2024
37. Student Engagement, Brand Image and Loyalty Relationships: The Mediating Role of Student Satisfaction
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Abu Rashed Osman, Mohd Hasanur Raihan Joarder, Md. Kazimul Hoque, and Jakowan
- Abstract
The aim of this study is to explore the relationship between student engagement, brand image, student satisfaction and loyalty. Furthermore, the study intends to explore the mediating role of student satisfaction in the relationship between engagement and loyalty as well as brand image and loyalty in the context of higher education. A representative sample of 296 students from the three best private universities in Dhaka has been gathered in order to test the hypotheses. The study demonstrates that brand image has a favorable impact on student satisfaction while student engagement has no influence on student satisfaction. The results show that loyalty is heavily influenced by the student satisfaction construct. When there is no mediation between student engagement and loyalty, a complete mediation is recognized when student satisfaction is a mediator between brand image and student loyalty. The study also reveals that there is a negative correlation between student engagement and satisfaction. The results of the research definitely improve brand perception which keeps students engaged to their higher education.
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- 2024
38. A Systematic Literature Review of Informal STEM Learning
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Hairunnisa Hussim, Roslinda Rosli, Nurul Aisya Zahira Mohd Nor, Siti Mistima Maat, Muhammad Sofwan Mahmud, Zanaton Iksan, Azmin Sham Rambely, Siti Nurdiyana Mahmud, Lilia Halim, Kamisah Osman, and Ah Nam Lay
- Abstract
Student learning outside the formal classroom is inextricably linked to informal learning environments. In many countries, most activities that employ informal learning prioritize the integration of science, technology, engineering, and mathematics (STEM) disciplines and have shown a positive impact on increasing students' interest, self-efficacy, and awareness of the STEM field. Thus, this study aims to systematically review the activities reported in the relevant studies focusing on informal STEM learning for K-12. High-index journals published under SCOPUS and Web of Science databases were utilized using a predetermined search strategy and retrieved two research team members' screened articles. Only empirical studies containing the terms "STEM education", "summer camp", and "informal learning" in the title, abstract, and keyword were included. Data were coded and organized into a matrix that was qualitatively assessed and categorized into themes. Based on the 25 studies reviewed, it was found that the integration of STEM disciplines in informal learning is notably varied. The characteristics of the STEM activities can be organized into seven themes: inquiry, focus on problems, design, cooperative learning, student-centred, hands-on, and 21st-century skills. Practice recommendations include a quality curriculum that aligns with informal STEM learning needs.
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- 2024
39. Success factors of the consultant selection stage of the Ghanaian Public Construction Projects: The road sector's perspective
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Barajei, Chelteau, Kusi, Elijah, Ackon, Frank, Osman, Abdul Manaan, Muhsin Z. Mohammed, Abdul, Simpeh, Frederick, and Gyimah, Francis
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- 2024
40. The Effect of Teacher Multicultural Attitudes on Self-Efficacy and Wellbeing at Work
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Sanni Aalto, Reeta Kankaanpää, Kirsi Peltonen, Ilse Derluyn, Nikolett Szelei, An Verelst, Lucia De Haene, Sofie de Smet, Caroline Spaas, Signe Smith Jervelund, Morten Skovdal, Arnfinn J. Andersen, Per Kristian Hilden, Marianne Opaas, Natalie Durbeej, Fatumo Osman, Anna Sarkadi, Emma Soye, and Mervi Vänskä
- Abstract
Teachers are pivotal in creating safe and efficacious learning environments for ethnic minority students. Research suggests that teachers' multicultural attitudes, self-efficacy, and wellbeing at work may all play important roles in this endeavor. Using survey data on 433 teachers in Belgium, Denmark, Finland, Norway, Sweden, and the United Kingdom, the present study used structural equation models to analyze the paths between teachers' multicultural attitudes and work-related wellbeing (work dedication and exhaustion), and whether self-efficacy mediates these paths. We further investigated how these associations differ between teachers of reception classes for migrant and refugee students versus teachers of multi-ethnic mainstream classes. The results show that positive multicultural attitudes were directly associated with high level of work dedication, but not with work exhaustion. Self-efficacy mediated the association between multicultural attitudes and work-related wellbeing, indicated by both higher work dedication and lower work exhaustion. Concerning the role of teacher's class type, self-efficacy mediated the association between positive multicultural attitudes and work dedication for both types of teachers, whereas the mediation to low work exhaustion was only evident in mainstream class teachers. To conclude, teachers' multicultural attitudes and work-related wellbeing are mediated by self-efficacy and this important link should be acknowledged when designing professional development programs in order to create supportive and competent learning environments for all students.
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- 2024
- Full Text
- View/download PDF
41. Anterolateral Versus Posterior Approach in Management of Lower Dorsal and Upper Lumbar Traumatic & Pathological Spine Fractures
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Gomaa, Mahmoud Ahmed, Osman, Ashraf Abdellatif, Saadeldin, Mohamed Khaled, and Hussein, Mohamed Abdellatif
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- 2019
- Full Text
- View/download PDF
42. Integration of CTCF loops, methylome, and transcriptome in differentiating LUHMES as a model for imprinting dynamics of the 15q11-q13 locus in human neurons
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Fugón, Orangel J Gutierrez, Sharifi, Osman, Heath, Nicholas, Soto, Daniela C, Gomez, J Antonio, Yasui, Dag H, Mendiola, Aron Judd P, O’Geen, Henriette, Beitnere, Ulrika, Tomkova, Marketa, Haghani, Viktoria, Dillon, Greg, Segal, David J, and LaSalle, Janine M
- Subjects
Biological Sciences ,Genetics ,Intellectual and Developmental Disabilities (IDD) ,Stem Cell Research - Induced Pluripotent Stem Cell ,Rare Diseases ,Stem Cell Research ,Pediatric ,Human Genome ,Neurosciences ,Brain Disorders ,1.1 Normal biological development and functioning ,Generic health relevance ,Humans ,Genomic Imprinting ,CCCTC-Binding Factor ,Chromosomes ,Human ,Pair 15 ,Neurons ,DNA Methylation ,Transcriptome ,Ubiquitin-Protein Ligases ,Cell Differentiation ,Angelman Syndrome ,RNA ,Long Noncoding ,Prader-Willi Syndrome ,snRNP Core Proteins ,Alleles ,Cell Line ,Epigenome ,chromatin ,imprinting ,human cell models ,Angelman ,LUHMES ,methylation ,UBE3A ,Medical and Health Sciences ,Genetics & Heredity - Abstract
Human cell line models, including the neuronal precursor line LUHMES, are important for investigating developmental transcriptional dynamics within imprinted regions, particularly the 15q11-q13 Angelman (AS) and Prader-Willi (PWS) syndrome locus. AS results from loss of maternal UBE3A in neurons, where the paternal allele is silenced by a convergent antisense transcript UBE3A-ATS, a lncRNA that terminates at PWAR1 in non-neurons. qRT-PCR analysis confirmed the exclusive and progressive increase in UBE3A-ATS in differentiating LUHMES neurons, validating their use for studying UBE3A silencing. Genome-wide transcriptome analyses revealed changes to 11 834 genes during neuronal differentiation, including the upregulation of most genes within the 15q11-q13 locus. To identify dynamic changes in chromatin loops linked to transcriptional activity, we performed a HiChIP validated by 4C, which identified two neuron-specific CTCF loops between MAGEL2-SNRPN and PWAR1-UBE3A. To determine if allele-specific differentially methylated regions (DMR) may be associated with CTCF loop anchors, whole genome long-read nanopore sequencing was performed. We identified a paternally hypomethylated DMR near the SNRPN upstream loop anchor exclusive to neurons and a paternally hypermethylated DMR near the PWAR1 CTCF anchor exclusive to undifferentiated cells, consistent with increases in neuronal transcription. Additionally, DMRs near CTCF loop anchors were observed in both cell types, indicative of allele-specific differences in chromatin loops regulating imprinted transcription. These results provide an integrated view of the 15q11-q13 epigenetic landscape during LUHMES neuronal differentiation, underscoring the complex interplay of transcription, chromatin looping, and DNA methylation. They also provide insights for future therapeutic approaches for AS and PWS.
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- 2024
43. A small footprint travelling-wave parametric amplifier with a high Signal-to-Noise Ratio improvement in a wide band
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Nilsson, Hampus Renberg, Chen, Liangyu, Tancredi, Giovanna, Rehammar, Robert, Shiri, Daryoush, Nilsson, Filip, Osman, Amr, Shumeiko, Vitaly, and Delsing, Per
- Subjects
Physics - Applied Physics ,Quantum Physics - Abstract
We characterise a small footprint travelling-wave parametric amplifier (TWPA). The TWPA is built with magnetically flux-tunable superconducting nonlinear asymmetric inductive elements (SNAILs) and parallel-plate capacitors. It implements three-wave mixing (3WM) with resonant phase matching (RPM), a small cutoff frequency for high gain per unitcell and impedance matching networks for large bandwidth impedance matching. The device has 200 unitcells and a physical footprint of only 1.1 mm^2, yet demonstrates an average parametric gain of 19 dB over a 3 GHz bandwidth, an average effective signal-to-noise ratio improvement of 10 dB and a clear speedup of qubit readout time., Comment: 9 pages + 2 appendix pages, 3 figures + 2 appendix figures
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- 2024
44. Temporal Divide-and-Conquer Anomaly Actions Localization in Semi-Supervised Videos with Hierarchical Transformer
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Osman, Nada and Torki, Marwan
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Anomaly action detection and localization play an essential role in security and advanced surveillance systems. However, due to the tremendous amount of surveillance videos, most of the available data for the task is unlabeled or semi-labeled with the video class known, but the location of the anomaly event is unknown. In this work, we target anomaly localization in semi-supervised videos. While the mainstream direction in addressing this task is focused on segment-level multi-instance learning and the generation of pseudo labels, we aim to explore a promising yet unfulfilled direction to solve the problem by learning the temporal relations within videos in order to locate anomaly events. To this end, we propose a hierarchical transformer model designed to evaluate the significance of observed actions in anomalous videos with a divide-and-conquer strategy along the temporal axis. Our approach segments a parent video hierarchically into multiple temporal children instances and measures the influence of the children nodes in classifying the abnormality of the parent video. Evaluating our model on two well-known anomaly detection datasets, UCF-crime and ShanghaiTech, proves its ability to interpret the observed actions within videos and localize the anomalous ones. Our proposed approach outperforms previous works relying on segment-level multiple-instance learning approaches while reaching a promising performance compared to the more recent pseudo-labeling-based approaches., Comment: Accepted at the 27th International Conference on Pattern Recognition (ICPR-2024)
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- 2024
45. Aligning Object Detector Bounding Boxes with Human Preference
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Strafforello, Ombretta, Kayhan, Osman S., Inel, Oana, Schutte, Klamer, and van Gemert, Jan
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Previous work shows that humans tend to prefer large bounding boxes over small bounding boxes with the same IoU. However, we show here that commonly used object detectors predict large and small boxes equally often. In this work, we investigate how to align automatically detected object boxes with human preference and study whether this improves human quality perception. We evaluate the performance of three commonly used object detectors through a user study (N = 123). We find that humans prefer object detections that are upscaled with factors of 1.5 or 2, even if the corresponding AP is close to 0. Motivated by this result, we propose an asymmetric bounding box regression loss that encourages large over small predicted bounding boxes. Our evaluation study shows that object detectors fine-tuned with the asymmetric loss are better aligned with human preference and are preferred over fixed scaling factors. A qualitative evaluation shows that human preference might be influenced by some object characteristics, like object shape., Comment: Accepted paper at the ECCV 2024 workshop on Assistive Computer Vision and Robotics (ACVR)
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- 2024
46. Value-Enriched Population Synthesis: Integrating a Motivational Layer
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Aguilera, Alba, Albertí, Miquel, Osman, Nardine, and Curto, Georgina
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Computer Science - Multiagent Systems - Abstract
In recent years, computational improvements have allowed for more nuanced, data-driven and geographically explicit agent-based simulations. So far, simulations have struggled to adequately represent the attributes that motivate the actions of the agents. In fact, existing population synthesis frameworks generate agent profiles limited to socio-demographic attributes. In this paper, we introduce a novel value-enriched population synthesis framework that integrates a motivational layer with the traditional individual and household socio-demographic layers. Our research highlights the significance of extending the profile of agents in synthetic populations by incorporating data on values, ideologies, opinions and vital priorities, which motivate the agents' behaviour. This motivational layer can help us develop a more nuanced decision-making mechanism for the agents in social simulation settings. Our methodology integrates microdata and macrodata within different Bayesian network structures. This contribution allows to generate synthetic populations with integrated value systems that preserve the inherent socio-demographic distributions of the real population in any specific region.
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- 2024
47. SER Evals: In-domain and Out-of-domain Benchmarking for Speech Emotion Recognition
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Osman, Mohamed, Kaplan, Daniel Z., and Nadeem, Tamer
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Computer Science - Computation and Language ,Computer Science - Artificial Intelligence - Abstract
Speech emotion recognition (SER) has made significant strides with the advent of powerful self-supervised learning (SSL) models. However, the generalization of these models to diverse languages and emotional expressions remains a challenge. We propose a large-scale benchmark to evaluate the robustness and adaptability of state-of-the-art SER models in both in-domain and out-of-domain settings. Our benchmark includes a diverse set of multilingual datasets, focusing on less commonly used corpora to assess generalization to new data. We employ logit adjustment to account for varying class distributions and establish a single dataset cluster for systematic evaluation. Surprisingly, we find that the Whisper model, primarily designed for automatic speech recognition, outperforms dedicated SSL models in cross-lingual SER. Our results highlight the need for more robust and generalizable SER models, and our benchmark serves as a valuable resource to drive future research in this direction., Comment: Accepted at INTERSPEECH 2024
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- 2024
48. Quantifying intra-regime weather variability for energy applications
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Gerighausen, Judith, Dorrington, Joshua, Osman, Marisol, and Grams, Christian M.
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Physics - Atmospheric and Oceanic Physics - Abstract
Weather regimes describe the large-scale atmospheric circulation in the mid-latitudes in terms of a few circulation states that modulate regional surface weather. Subseasonal forecasts of prevailing weather regimes have proven skillful and valuable to energy applications. Previous studies have mainly focused on the mean surface weather associated with a regime. However, we show in this paper that variability of surface weather within a regime cannot be ignored. These intra-regime variations, caused by different `subflavors' of the same regime, can be captured by continuous regime indices and allow a refined application of weather regimes. Here we discuss wintertime temperature and wind speed regime anomalies for four selected countries, and provide guidance on the operational use and interpretation of regime forecasts. In an accompanying supplementary dataset we provide similar analysis for all European countries, seasons and key energy variables, useful as an applied reference., Comment: 13 pages, 4 figures, supplement in SI.pdf. Submitted to Geophysical Research Letters
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- 2024
49. Pixel-Level GPS Localization and Denoising using Computer Vision and 6G Communication Beams
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Charan, Gouranga, Osman, Tawfik, and Alkhateeb, Ahmed
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Electrical Engineering and Systems Science - Signal Processing - Abstract
Accurate localization is crucial for various applications, including autonomous vehicles and next-generation wireless networks. However, the reliability and precision of Global Navigation Satellite Systems (GNSS), such as the Global Positioning System (GPS), are compromised by multi-path errors and non-line-of-sight scenarios. This paper presents a novel approach to enhance GPS accuracy by combining visual data from RGB cameras with wireless signals captured at millimeter-wave (mmWave) and sub-terahertz (sub-THz) basestations. We propose a sensing-aided framework for (i) site-specific GPS data characterization and (ii) GPS position de-noising that utilizes multi-modal visual and wireless information. Our approach is validated in a realistic Vehicle-to-Infrastructure (V2I) scenario using a comprehensive real-world dataset, demonstrating a substantial reduction in localization error to sub-meter levels. This method represents a significant advancement in achieving precise localization, particularly beneficial for high-mobility applications in 5G and beyond networks., Comment: Datasets and code files are available on the DeepSense website: https://deepsense6g.net/. To appear in IEEE GLOBECOM 2024
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- 2024
50. DRAM Errors and Cosmic Rays: Space Invaders or Science Fiction?
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Boixaderas, Isaac, Amaya, Jorge, Moré, Sergi, Bartolome, Javier, Vicente, David, Unsal, Osman, Gizopoulos, Dimitris, Carpenter, Paul M., Radojković, Petar, and Ayguadé, Eduard
- Subjects
Computer Science - Distributed, Parallel, and Cluster Computing - Abstract
It is widely accepted that cosmic rays are a plausible cause of DRAM errors in high-performance computing (HPC) systems, and various studies suggest that they could explain some aspects of the observed DRAM error behavior. However, this phenomenon is insufficiently studied in production environments. We analyze the correlations between cosmic rays and DRAM errors on two HPC clusters: a production supercomputer with server-class DDR3-1600 and a prototype with LPDDR3-1600 and no hardware error correction. Our error logs cover 2000 billion MB-hours for the MareNostrum 3 supercomputer and 135 million MB-hours for the Mont-Blanc prototype. Our analysis combines quantitative analysis, formal statistical methods and machine learning. We detect no indications that cosmic rays have any influence on the DRAM errors. To understand whether the findings are specific to systems under study, located at 100 meters above the sea level, the analysis should be repeated on other HPC clusters, especially the ones located on higher altitudes. Also, analysis can (and should) be applied to revisit and extend numerous previous studies which use cosmic rays as a hypothetical explanation for some aspects of the observed DRAM error behaviors., Comment: Accepted for publication in SBAC-PAD'24
- Published
- 2024
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