17 results on '"Plagianakos VP"'
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2. Diagnosing students' misconception in Hydrostatic Pressure through a 4-tier test.
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Bessas N, Tzanaki E, Vavougios D, and Plagianakos VP
- Abstract
The aim of this study is to record and highlight the misconceptions of Greek junior high school students regarding the concept of hydrostatic pressure. Hydrostatic pressure is included in most international curricula for this age group and in Greece, is introduced in the context of the study of fluid equilibrium in the second grade of the junior high school. After thorough international literature review and interviews with teachers who teach the physics course, to discover the students' way of thinking and their common misconceptions in the case of hydrostatic pressure concept, the researchers of this study created targeted questionnaires for students aged 12-13 years old. The method followed to determine the misconceptions in this article is the distribution of a 4 - tier test to a sample of students who, initially, attended the relevant course. During the 2023-24 school year, the questionnaires were handed out to 33 s-grade students at a junior high school in Athens, Greece. The students had previously been taught the corresponding unit. Before being administered to the students, the questionnaires were subjected to a content validity test by four physics experts according to Aiken's V index. The students' responses were inputted into SPSS version 25, which was utilized for the statistical analysis. Statistical analysis of the results revealed a high incidence of misconceptions related to the effects of container shape, area, and pressure direction, as well as a significant lack of knowledge. Although the overall rates of misconceptions may be low, the study recorded significant knowledge gaps in physics education, suggesting the need for improved teaching methods. The findings suggest that more effective teaching strategies and experimental approaches are needed to address these misconceptions our research highlighted. This study contributes a reliable diagnostic tool for future research and teaching, aiming to enhance conceptual understanding of hydrostatic pressure in educational settings., Competing Interests: The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (© 2024 The Authors.)
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- 2024
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3. Investigating the overlap of machine learning algorithms in the final results of RNA-seq analysis on gene expression estimation.
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Stathopoulou KM, Georgakopoulos S, Tasoulis S, and Plagianakos VP
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Advances in computer science in combination with the next-generation sequencing have introduced a new era in biology, enabling advanced state-of-the-art analysis of complex biological data. Bioinformatics is evolving as a union field between computer Science and biology, enabling the representation, storage, management, analysis and exploration of many types of data with a plethora of machine learning algorithms and computing tools. In this study, we used machine learning algorithms to detect differentially expressed genes between different types of cancer and showing the existence overlap to final results from RNA-sequencing analysis. The datasets were obtained from the National Center for Biotechnology Information resource. Specifically, dataset GSE68086 which corresponds to PMID:200,068,086. This dataset consists of 171 blood platelet samples collected from patients with six different tumors and healthy individuals. All steps for RNA-sequencing analysis (preprocessing, read alignment, transcriptome reconstruction, expression quantification and differential expression analysis) were followed. Machine Learning- based Random Forest and Gradient Boosting algorithms were applied to predict significant genes. The Rstudio statistical tool was used for the analysis., (© The Author(s) 2024.)
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- 2024
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4. Developing predictive precision medicine models by exploiting real-world data using machine learning methods.
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Theocharopoulos PC, Bersimis S, Georgakopoulos SV, Karaminas A, Tasoulis SK, and Plagianakos VP
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Computational Medicine encompasses the application of Statistical Machine Learning and Artificial Intelligence methods on several traditional medical approaches, including biochemical testing which is extremely valuable both for early disease prognosis and long-term individual monitoring, as it can provide important information about a person's health status. However, using Statistical Machine Learning and Artificial Intelligence algorithms to analyze biochemical test data from Electronic Health Records requires several preparatory steps, such as data manipulation and standardization. This study presents a novel approach for utilizing Electronic Health Records from large, real-world databases to develop predictive precision medicine models by exploiting Artificial Intelligence. Furthermore, to demonstrate the effectiveness of this approach, we compare the performance of various traditional Statistical Machine Learning and Deep Learning algorithms in predicting individuals' future biochemical test outcomes. Specifically, using data from a large real-world database, we exploit a longitudinal format of the data in order to predict the future values of 15 biochemical tests and identify individuals at high risk. The proposed approach and the extensive model comparison contribute to the personalized approach that modern medicine aims to achieve., Competing Interests: The authors declare that they have no conflict of interest. The manuscript was written through the contributions of all authors. All authors have given approval for the final version of the manuscript., (© 2024 Informa UK Limited, trading as Taylor & Francis Group.)
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- 2024
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5. TarBase-v9.0 extends experimentally supported miRNA-gene interactions to cell-types and virally encoded miRNAs.
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Skoufos G, Kakoulidis P, Tastsoglou S, Zacharopoulou E, Kotsira V, Miliotis M, Mavromati G, Grigoriadis D, Zioga M, Velli A, Koutou I, Karagkouni D, Stavropoulos S, Kardaras FS, Lifousi A, Vavalou E, Ovsepian A, Skoulakis A, Tasoulis SK, Georgakopoulos SV, Plagianakos VP, and Hatzigeorgiou AG
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- Genes, Viral genetics, Internet, Animals, Databases, Nucleic Acid, MicroRNAs genetics, MicroRNAs metabolism
- Abstract
TarBase is a reference database dedicated to produce, curate and deliver high quality experimentally-supported microRNA (miRNA) targets on protein-coding transcripts. In its latest version (v9.0, https://dianalab.e-ce.uth.gr/tarbasev9), it pushes the envelope by introducing virally-encoded miRNAs, interactions leading to target-directed miRNA degradation (TDMD) events and the largest collection of miRNA-gene interactions to date in a plethora of experimental settings, tissues and cell-types. It catalogues ∼6 million entries, comprising ∼2 million unique miRNA-gene pairs, supported by 37 experimental (high- and low-yield) protocols in 172 tissues and cell-types. Interactions are annotated with rich metadata including information on genes/transcripts, miRNAs, samples, experimental contexts and publications, while millions of miRNA-binding locations are also provided at cell-type resolution. A completely re-designed interface with state-of-the-art web technologies, incorporates more features, and allows flexible and ingenious use. The new interface provides the capability to design sophisticated queries with numerous filtering criteria including cell lines, experimental conditions, cell types, experimental methods, species and/or tissues of interest. Additionally, a plethora of fine-tuning capacities have been integrated to the platform, offering the refinement of the returned interactions based on miRNA confidence and expression levels, while boundless local retrieval of the offered interactions and metadata is enabled., (© The Author(s) 2023. Published by Oxford University Press on behalf of Nucleic Acids Research.)
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- 2024
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6. Analysing sentiment change detection of Covid-19 tweets.
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Theocharopoulos PC, Tsoukala A, Georgakopoulos SV, Tasoulis SK, and Plagianakos VP
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The Covid-19 pandemic made a significant impact on society, including the widespread implementation of lockdowns to prevent the spread of the virus. This measure led to a decrease in face-to-face social interactions and, as an equivalent, an increase in the use of social media platforms, such as Twitter. As part of Industry 4.0, sentiment analysis can be exploited to study public attitudes toward future pandemics and sociopolitical situations in general. This work presents an analysis framework by applying a combination of natural language processing techniques and machine learning algorithms to classify the sentiment of each tweet as positive, or negative. Through extensive experimentation, we expose the ideal model for this task and, subsequently, utilize sentiment predictions to perform time series analysis over the course of the pandemic. In addition, a change point detection algorithm was applied in order to identify the turning points in public attitudes toward the pandemic, which were validated by cross-referencing the news report at that particular period of time. Finally, we study the relationship between sentiment trends on social media and, news coverage of the pandemic, providing insights into the public's perception of the pandemic and its influence on the news., Competing Interests: Conflict of interestThe authors declared that they have no conflict of interest., (© The Author(s) 2023.)
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- 2023
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7. A divisive hierarchical clustering methodology for enhancing the ensemble prediction power in large scale population studies: the ATHLOS project.
- Author
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Barmpas P, Tasoulis S, Vrahatis AG, Georgakopoulos SV, Anagnostou P, Prina M, Ayuso-Mateos JL, Bickenbach J, Bayes I, Bobak M, Caballero FF, Chatterji S, Egea-Cortés L, García-Esquinas E, Leonardi M, Koskinen S, Koupil I, Paja K A, Prince M, Sanderson W, Scherbov S, Tamosiunas A, Galas A, Haro JM, Sanchez-Niubo A, Plagianakos VP, and Panagiotakos D
- Abstract
The ATHLOS cohort is composed of several harmonized datasets of international groups related to health and aging. As a result, the Healthy Aging index has been constructed based on a selection of variables from 16 individual studies. In this paper, we consider additional variables found in ATHLOS and investigate their utilization for predicting the Healthy Aging index. For this purpose, motivated by the volume and diversity of the dataset, we focus our attention upon data clustering, where unsupervised learning is utilized to enhance prediction power. Thus we show the predictive utility of exploiting hidden data structures. In addition, we demonstrate that imposed computation bottlenecks can be surpassed when using appropriate hierarchical clustering, within a clustering for ensemble classification scheme, while retaining prediction benefits. We propose a complete methodology that is evaluated against baseline methods and the original concept. The results are very encouraging suggesting further developments in this direction along with applications in tasks with similar characteristics. A straightforward open source implementation for the R project is also provided (https://github.com/Petros-Barmpas/HCEP)., Supplementary Information: The online version contains supplementary material available at 10.1007/s13755-022-00171-1., (© The Author(s), under exclusive licence to Springer Nature Switzerland AG 2022.)
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- 2022
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8. Temporal trends in pulmonary embolism prevalence in Greece during 2013-2017.
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Lampropoulos IC, Raptis DG, Daniil Z, Tasoulis SK, Plagianakos VP, Malli F, and Gourgoulianis KI
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- Aged, Aged, 80 and over, Female, Greece epidemiology, Humans, Male, Prevalence, Pulmonary Embolism epidemiology, State Medicine
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Background: Pulmonary embolism (PE) epidemiological data about the disease prevalence in the general population are unclear. The present study aims to investigate the prevalence of PE in Greece and the associated temporal trends for the years 2013-2017., Methods: Data on medical prescriptions for PE in the years 2013-2017 were provided by the Greek National Health Service Organization (EOPYY). Data on age, gender, specialty of the prescribing physician and prescription unit were provided as well., Results: The total number of medical prescriptions for PE for the study period was 101,426. Of the total prescriptions, 51% were issued by the Public Sector and 48% by the Private Sector. In 2013 the prevalence of PE was 5.43 cases per 100,000 citizens and increased constantly until 2017 with 23.79 cases per 100,000 population. Prevalence was higher in all years studied in the age group of 70-80 years. For the year 2017, we observed 69.35 cases per 100,000 population for subjects 70-80 years, followed by the ages 80-90 (60.58/100,000) and 60-70 years (56.47 /100,000). Females displayed higher PE prevalence than males and higher increasing trend., Conclusion: PE prevalence has an increasing trend throughout the years 2013-2017 while prevalence in females is higher than males and displays a higher increasing trend. Our results may be used to appropriately organize nationwide health care campaigns aiming at the diagnosis, treatment and prevention of PE.
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- 2021
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9. Detecting and Locating Gastrointestinal Anomalies Using Deep Learning and Iterative Cluster Unification.
- Author
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Iakovidis DK, Georgakopoulos SV, Vasilakakis M, Koulaouzidis A, and Plagianakos VP
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- Algorithms, Databases, Factual, Humans, Video Recording methods, Deep Learning, Gastrointestinal Diseases diagnostic imaging, Gastrointestinal Tract diagnostic imaging, Gastroscopy methods, Image Interpretation, Computer-Assisted methods
- Abstract
This paper proposes a novel methodology for automatic detection and localization of gastrointestinal (GI) anomalies in endoscopic video frame sequences. Training is performed with weakly annotated images, using only image-level, semantic labels instead of detailed, and pixel-level annotations. This makes it a cost-effective approach for the analysis of large videoendoscopy repositories. Other advantages of the proposed methodology include its capability to suggest possible locations of GI anomalies within the video frames, and its generality, in the sense that abnormal frame detection is based on automatically derived image features. It is implemented in three phases: 1) it classifies the video frames into abnormal or normal using a weakly supervised convolutional neural network (WCNN) architecture; 2) detects salient points from deeper WCNN layers, using a deep saliency detection algorithm; and 3) localizes GI anomalies using an iterative cluster unification (ICU) algorithm. ICU is based on a pointwise cross-feature-map (PCFM) descriptor extracted locally from the detected salient points using information derived from the WCNN. Results, from extensive experimentation using publicly available collections of gastrointestinal endoscopy video frames, are presented. The data sets used include a variety of GI anomalies. Both anomaly detection and localization performance achieved, in terms of the area under receiver operating characteristic (AUC), were >80%. The highest AUC for anomaly detection was obtained on conventional gastroscopy images, reaching 96%, and the highest AUC for anomaly localization was obtained on wireless capsule endoscopy images, reaching 88%.
- Published
- 2018
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10. Statistical data mining of streaming motion data for fall detection in assistive environments.
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Tasoulis SK, Doukas CN, Maglogiannis I, and Plagianakos VP
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- Aged, Humans, Accidental Falls, Data Mining, Motion
- Abstract
The analysis of human motion data is interesting for the purpose of activity recognition or emergency event detection, especially in the case of elderly or disabled people living independently in their homes. Several techniques have been proposed for identifying such distress situations using either motion, audio or video sensors on the monitored subject (wearable sensors) or the surrounding environment. The output of such sensors is data streams that require real time recognition, especially in emergency situations, thus traditional classification approaches may not be applicable for immediate alarm triggering or fall prevention. This paper presents a statistical mining methodology that may be used for the specific problem of real time fall detection. Visual data captured from the user's environment, using overhead cameras along with motion data are collected from accelerometers on the subject's body and are fed to the fall detection system. The paper includes the details of the stream data mining methodology incorporated in the system along with an initial evaluation of the achieved accuracy in detecting falls.
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- 2011
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11. Classification of dermatological images using advanced clustering techniques.
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Tasoulis SK, Doukas CN, Maglogiannis I, and Plagianakos VP
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- Algorithms, Humans, Image Processing, Computer-Assisted, Skin Neoplasms diagnosis, Cluster Analysis, Melanoma diagnosis
- Abstract
Computer vision-based diagnosis systems have been widely used in dermatology, aiming at the early detection of skin cancer and more specifically the recognition of malignant melanoma tumor. This paper proposes a novel clustering technique for the characterization and categorization of pigmented skin lesions in dermatological images. Appropriate image processing techniques (i.e. segmentation, border detection, color and texture processing) are utilized for feature extraction. The proposed method uses Principal Component Analysis and is considered appropriate, since it is suitable for problems with high dimensional data. Initial experimental results have proved the superiority of this method against traditional ones.
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- 2010
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12. Classification of apoptosis using advanced clustering techniques on digital microscopic images.
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Tasoulis SK, Doukas CN, Maglogiannis I, and Plagianakos VP
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- Cluster Analysis, Humans, Algorithms, Apoptosis, Imaging, Three-Dimensional methods, Microscopy methods
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Programmed cell death, also known as apoptosis is of fundamental importance in many biological processes and also highly associated with serious diseases like cancer and HIV. The current paper presents an innovative method for apoptosis phenomenon characterization based on apoptotic cell quantification and detection using active contours. Subsequently, we employ appropriate data mining techniques and perform characterization of apoptosis on digital microscopic images. A particular class of clustering algorithms, utilizing information driven by the Principal Component Analysis, has been very successful in dealing with such data. In this work, we employ a recently proposed clustering algorithm to solve this real world clustering task.
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- 2010
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13. Cell-nuclear data reduction and prognostic model selection in bladder tumor recurrence.
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Tasoulis DK, Spyridonos P, Pavlidis NG, Plagianakos VP, Ravazoula P, Nikiforidis G, and Vrahatis MN
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- Algorithms, Fuzzy Logic, Humans, Neoplasm Recurrence, Local pathology, Neoplasm Recurrence, Local therapy, Neoplasm Staging, Prognosis, Urinary Bladder Neoplasms classification, Urinary Bladder Neoplasms therapy, Cell Nucleus pathology, Models, Biological, Neoplasm Recurrence, Local diagnosis, Urinary Bladder Neoplasms diagnosis, Urinary Bladder Neoplasms pathology
- Abstract
Objective: The paper aims at improving the prediction of superficial bladder recurrence. To this end, feedforward neural networks (FNNs) and a feature selection method based on unsupervised clustering, were employed., Material and Methods: A retrospective prognostic study of 127 patients diagnosed with superficial urinary bladder cancer was performed. Images from biopsies were digitized and cell nuclei features were extracted. To design FNN classifiers, different training methods and architectures were investigated. The unsupervised k-windows (UKW) and the fuzzy c-means clustering algorithms were applied on the feature set to identify the most informative feature subsets., Results: UKW managed to reduce the dimensionality of the feature space significantly, and yielded prediction rates 87.95% and 91.41%, for non-recurrent and recurrent cases, respectively. The prediction rates achieved with the reduced feature set were marginally lower compared to the ones attained with the complete feature set. The training algorithm that exhibited the best performance in all cases was the adaptive on-line backpropagation algorithm., Conclusions: FNNs can contribute to the accurate prognosis of bladder cancer recurrence. The proposed feature selection method can remove redundant information without a significant loss in predictive accuracy, and thereby render the prognostic model less complex, more robust, and hence suitable for clinical use.
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- 2006
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14. Unsupervised clustering in mRNA expression profiles.
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Tasoulis DK, Plagianakos VP, and Vrahatis MN
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- Algorithms, Colonic Neoplasms genetics, Female, Humans, Leukemia, Myeloid, Acute genetics, Lymphoma genetics, Male, Neural Networks, Computer, Precursor Cell Lymphoblastic Leukemia-Lymphoma genetics, Prostatic Neoplasms genetics, Reproducibility of Results, Software, Artificial Intelligence, Cluster Analysis, Gene Expression Profiling methods, Mathematical Computing, Neoplasms genetics, Oligonucleotide Array Sequence Analysis methods, RNA, Messenger genetics
- Abstract
The development of microarray technologies gives scientists the ability to examine, discover and monitor the mRNA transcript levels of thousands of genes in a single experiment. Nonetheless, the tremendous amount of data that can be obtained from microarray studies presents a challenge for data analysis. The most commonly used computational approach for analyzing microarray data is cluster analysis, since the number of genes is usually very high compared to the number of samples. In this paper, we investigate the application of the recently proposed k-windows clustering algorithm on gene expression microarray data. This algorithm apart from identifying the clusters present in a data set also calculates their number and thus requires no special knowledge about the data. To improve the quality of the clustering, we employ various dimension reduction techniques and propose a hybrid one. The results obtained by the application of the algorithm exhibit high classification success.
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- 2006
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15. Distributed computing methodology for training neural networks in an image-guided diagnostic application.
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Plagianakos VP, Magoulas GD, and Vrahatis MN
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- Algorithms, Artificial Intelligence, Computer Simulation, Computing Methodologies, Humans, Image Processing, Computer-Assisted, Numerical Analysis, Computer-Assisted, Pattern Recognition, Automated, Programming Languages, Signal Processing, Computer-Assisted, Software, Software Design, User-Computer Interface, Colonoscopy methods, Neural Networks, Computer
- Abstract
Distributed computing is a process through which a set of computers connected by a network is used collectively to solve a single problem. In this paper, we propose a distributed computing methodology for training neural networks for the detection of lesions in colonoscopy. Our approach is based on partitioning the training set across multiple processors using a parallel virtual machine. In this way, interconnected computers of varied architectures can be used for the distributed evaluation of the error function and gradient values, and, thus, training neural networks utilizing various learning methods. The proposed methodology has large granularity and low synchronization, and has been implemented and tested. Our results indicate that the parallel virtual machine implementation of the training algorithms developed leads to considerable speedup, especially when large network architectures and training sets are used.
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- 2006
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16. Deterministic nonmonotone strategies for effective training of multilayer perceptrons.
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Plagianakos VP, Magoulas GD, and Vrahatis MN
- Abstract
We present deterministic nonmonotone learning strategies for multilayer perceptrons (MLPs), i.e., deterministic training algorithms in which error function values are allowed to increase at some epochs. To this end, we argue that the current error function value must satisfy a nonmonotone criterion with respect to the maximum error function value of the M previous epochs, and we propose a subprocedure to dynamically compute M. The nonmonotone strategy can be incorporated in any batch training algorithm and provides fast, stable, and reliable learning. Experimental results in different classes of problems show that this approach improves the convergence speed and success percentage of first-order training algorithms and alleviates the need for fine-tuning problem-depended heuristic parameters.
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- 2002
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17. Globally convergent algorithms with local learning rates.
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Magoulas GD, Plagianakos VP, and Vrahatis MN
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A novel generalized theoretical result is presented that underpins the development of globally convergent first-order batch training algorithms which employ local learning rates. This result allows us to equip algorithms of this class with a strategy for adapting the overall direction of search to a descent one. In this way, a decrease of the batch-error measure at each training iteration is ensured, and convergence of the sequence of weight iterates to a local minimizer of the batch error function is obtained from remote initial weights. The effectiveness of the theoretical result is illustrated in three application examples by comparing two well-known training algorithms with local learning rates to their globally convergent modifications.
- Published
- 2002
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