14,408 results on '"Li Ang"'
Search Results
202. Federated learning for supervised cross-modal retrieval
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Li, Ang, Li, Yawen, and Shao, Yingxia
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- 2024
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203. Publisher Correction: Nitrogen-doped amorphous monolayer carbon
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Bai, Xiuhui, Hu, Pengfei, Li, Ang, Zhang, Youwei, Li, Aowen, Zhang, Guangjie, Xue, Yufeng, Jiang, Tianxing, Wang, Zezhou, Cui, Hanke, Kang, Jianxin, Zhao, Hewei, Gu, Lin, Zhou, Wu, Liu, Li-Min, Qiu, Xiaohui, and Guo, Lin
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- 2024
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204. Machine Learning Automated Approach for Enormous Synchrotron X-Ray Diffraction Data Interpretation
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Zhao, Xiaodong, Luo, YiXuan, Liu, Juejing, Liu, Wenjun, Rosso, Kevin M., Guo, Xiaofeng, Geng, Tong, Li, Ang, and Zhang, Xin
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Condensed Matter - Disordered Systems and Neural Networks ,Computer Science - Machine Learning - Abstract
Manual analysis of XRD data is usually laborious and time consuming. The deep neural network (DNN) based models trained by synthetic XRD patterns are proved to be an automatic, accurate, and high throughput method to analysis common XRD data collected from solid sample in ambient environment. However, it remains unknown that whether synthetic XRD based models are capable to solve u-XRD mapping data for in-situ experiments involving liquid phase exhibiting lower quality with significant artifacts. In this study, we collected u-XRD mapping data from an LaCl3-calcite hydrothermal fluid system and trained two categories of models to solve the experimental XRD patterns. The models trained by synthetic XRD patterns show low accuracy (as low as 64%) when solving experimental u-XRD mapping data. The accuracy of the DNN models was significantly improved (90% or above) when training them with the dataset containing both synthetic and small number of labeled experimental u-XRD patterns. This study highlighted the importance of labeled experimental patterns on the training of DNN models to solve u-XRD mapping data from in-situ experiments involving liquid phase., Comment: See link below for supporting information https://docs.google.com/document/d/1m2SyaBDej4BhkWCA38GRXJe5Jd7Di7cp/edit?usp=sharing&ouid=108731997922646321851&rtpof=true&sd=true
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- 2023
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205. MAPSeg: Unified Unsupervised Domain Adaptation for Heterogeneous Medical Image Segmentation Based on 3D Masked Autoencoding and Pseudo-Labeling
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Zhang, Xuzhe, Wu, Yuhao, Angelini, Elsa, Li, Ang, Guo, Jia, Rasmussen, Jerod M., O'Connor, Thomas G., Wadhwa, Pathik D., Jackowski, Andrea Parolin, Li, Hai, Posner, Jonathan, Laine, Andrew F., and Wang, Yun
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence ,Computer Science - Machine Learning - Abstract
Robust segmentation is critical for deriving quantitative measures from large-scale, multi-center, and longitudinal medical scans. Manually annotating medical scans, however, is expensive and labor-intensive and may not always be available in every domain. Unsupervised domain adaptation (UDA) is a well-studied technique that alleviates this label-scarcity problem by leveraging available labels from another domain. In this study, we introduce Masked Autoencoding and Pseudo-Labeling Segmentation (MAPSeg), a $\textbf{unified}$ UDA framework with great versatility and superior performance for heterogeneous and volumetric medical image segmentation. To the best of our knowledge, this is the first study that systematically reviews and develops a framework to tackle four different domain shifts in medical image segmentation. More importantly, MAPSeg is the first framework that can be applied to $\textbf{centralized}$, $\textbf{federated}$, and $\textbf{test-time}$ UDA while maintaining comparable performance. We compare MAPSeg with previous state-of-the-art methods on a private infant brain MRI dataset and a public cardiac CT-MRI dataset, and MAPSeg outperforms others by a large margin (10.5 Dice improvement on the private MRI dataset and 5.7 on the public CT-MRI dataset). MAPSeg poses great practical value and can be applied to real-world problems. GitHub: https://github.com/XuzheZ/MAPSeg/., Comment: CVPR 2024 camera-ready (8 pages, 3 figures) with the supplemental materials (5 pages, 4 figures). Xuzhe Zhang and Yuhao Wu are co-first authors. Andrew F. Laine and Yun Wang are co-senior supervising authors
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- 2023
206. Deep Learning-Based Channel Extrapolation for Pattern Reconfigurable Massive MIMO
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Liang, Mu and Li, Ang
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Electrical Engineering and Systems Science - Signal Processing - Abstract
Reconfigurable antennas that can dynamically change their operation state exhibit excellent adaptivity and flexibility over traditional antennas, and MIMO arrays that consist of multifunctional and reconfigurable antennas (MRAs) are foreseen as one promising solution towards future Holographic MIMO. Specifically, in pattern reconfigurable MIMO (PR-MIMO) communication systems, accurate acquisition of channel state information (CSI) of all the radiation modes is a challenging task, because using conventional pilot-based channel estimation techniques in PR-MIMO systems incurs overwhelming pilot overheads. In this letter, we leverage deep learning methods to design a PR neural network, which can use the estimated CSI for one radiation mode to infer CSIs for the other radiation modes. In order to reduce the pilot overheads, we propose a new channel estimation method specially for PR-MIMO systems, which divides the transmit antennas of PR-MIMO into groups and antennas in different groups employ different radiation modes. Compared with conventional full-connected real-valued deep neural networks (DNN), the PR neural network which uses complex-valued coefficients can work directly in the complex domain. Experiment results show that the proposed channel extrapolation method offers significant performance gains in terms of extrapolation accuracy over benchmark schemes.
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- 2023
207. Cryogenic hyperabrupt strontium titanate varactors for sensitive reflectometry of quantum dots
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Eggli, Rafael S., Svab, Simon, Patlatiuk, Taras, Trüssel, Dominique A., Carballido, Miguel J., Kwon, Pierre Chevalier, Geyer, Simon, Li, Ang, Bakkers, Erik P. A. M., Kuhlmann, Andreas V., and Zumbühl, Dominik M.
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Condensed Matter - Mesoscale and Nanoscale Physics ,Condensed Matter - Materials Science ,Quantum Physics - Abstract
Radio frequency reflectometry techniques enable high bandwidth readout of semiconductor quantum dots. Careful impedance matching of the resonant circuit is required to achieve high sensitivity, which however proves challenging at cryogenic temperatures. Gallium arsenide-based voltage-tunable capacitors, so-called varactor diodes, can be used for in-situ tuning of the circuit impedance but deteriorate and fail at temperatures below 10 K and in magnetic fields. Here, we investigate a varactor based on strontium titanate with hyperabrupt capacitance-voltage characteristic, that is, a capacitance tunability similar to the best gallium arsenide-based devices. The varactor design introduced here is compact, scalable and easy to wirebond with an accessible capacitance range from 45 pF to 3.2 pF. We tune a resonant inductor-capacitor circuit to perfect impedance matching and observe robust, temperature and field independent matching down to 11 mK and up to 2 T in-plane field. Finally, we perform gate-dispersive charge sensing on a germanium/silicon core/shell nanowire hole double quantum dot, paving the way towards gate-based single-shot spin readout. Our results bring small, magnetic field-resilient, highly tunable varactors to mK temperatures, expanding the toolbox of cryo-radio frequency applications., Comment: 5 pages + 5 pages Appendix; 4 figures + 8 figures in Appendix; presented at APS March Meeting 2023 Session N72.002
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- 2023
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208. AutoFed: Heterogeneity-Aware Federated Multimodal Learning for Robust Autonomous Driving
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Zheng, Tianyue, Li, Ang, Chen, Zhe, Wang, Hongbo, and Luo, Jun
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Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Computer Science - Computer Vision and Pattern Recognition - Abstract
Object detection with on-board sensors (e.g., lidar, radar, and camera) play a crucial role in autonomous driving (AD), and these sensors complement each other in modalities. While crowdsensing may potentially exploit these sensors (of huge quantity) to derive more comprehensive knowledge, \textit{federated learning} (FL) appears to be the necessary tool to reach this potential: it enables autonomous vehicles (AVs) to train machine learning models without explicitly sharing raw sensory data. However, the multimodal sensors introduce various data heterogeneity across distributed AVs (e.g., label quantity skews and varied modalities), posing critical challenges to effective FL. To this end, we present AutoFed as a heterogeneity-aware FL framework to fully exploit multimodal sensory data on AVs and thus enable robust AD. Specifically, we first propose a novel model leveraging pseudo-labeling to avoid mistakenly treating unlabeled objects as the background. We also propose an autoencoder-based data imputation method to fill missing data modality (of certain AVs) with the available ones. To further reconcile the heterogeneity, we finally present a client selection mechanism exploiting the similarities among client models to improve both training stability and convergence rate. Our experiments on benchmark dataset confirm that AutoFed substantially improves over status quo approaches in both precision and recall, while demonstrating strong robustness to adverse weather conditions.
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- 2023
209. Open-VCLIP: Transforming CLIP to an Open-vocabulary Video Model via Interpolated Weight Optimization
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Weng, Zejia, Yang, Xitong, Li, Ang, Wu, Zuxuan, and Jiang, Yu-Gang
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Computer Science - Computer Vision and Pattern Recognition - Abstract
Contrastive Language-Image Pretraining (CLIP) has demonstrated impressive zero-shot learning abilities for image understanding, yet limited effort has been made to investigate CLIP for zero-shot video recognition. We introduce Open-VCLIP, a simple yet effective approach that transforms CLIP into a strong zero-shot video classifier that can recognize unseen actions and events at test time. Our framework extends CLIP with minimal modifications to model spatial-temporal relationships in videos, making it a specialized video classifier, while striving for generalization. We formally show that training an Open-VCLIP is equivalent to continual learning with zero historical data. To address this problem, we propose Interpolated Weight Optimization, which utilizes the benefit of weight interpolation in both training and test time. We evaluate our method on three popular and challenging action recognition datasets following various zero-shot evaluation protocols and we demonstrate our approach outperforms state-of-the-art methods by clear margins. In particular, we achieve 87.9%, 58.3%, 81.1% zero-shot accuracy on UCF, HMDB and Kinetics-600 respectively, outperforming state-of-the-art methods by 8.3%, 7.8% and 12.2%. Code is released at https://github.com/wengzejia1/Open-VCLIP., Comment: 12 pages, 4 figures, ICML 2023
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- 2023
210. Epsilon-Identifiability of Causal Quantities
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Li, Ang, Mueller, Scott, and Pearl, Judea
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Computer Science - Artificial Intelligence ,Mathematics - Statistics Theory - Abstract
Identifying the effects of causes and causes of effects is vital in virtually every scientific field. Often, however, the needed probabilities may not be fully identifiable from the data sources available. This paper shows how partial identifiability is still possible for several probabilities of causation. We term this epsilon-identifiability and demonstrate its usefulness in cases where the behavior of certain subpopulations can be restricted to within some narrow bounds. In particular, we show how unidentifiable causal effects and counterfactual probabilities can be narrowly bounded when such allowances are made. Often those allowances are easily measured and reasonably assumed. Finally, epsilon-identifiability is applied to the unit selection problem.
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- 2023
211. Closed-Loop Magnetic Manipulation for Robotic Transesophageal Echocardiography
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Li, Keyu, Xu, Yangxin, Zhao, Ziqi, Li, Ang, and Meng, Max Q. -H.
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Computer Science - Robotics - Abstract
This paper presents a closed-loop magnetic manipulation framework for robotic transesophageal echocardiography (TEE) acquisitions. Different from previous work on intracorporeal robotic ultrasound acquisitions that focus on continuum robot control, we first investigate the use of magnetic control methods for more direct, intuitive, and accurate manipulation of the distal tip of the probe. We modify a standard TEE probe by attaching a permanent magnet and an inertial measurement unit sensor to the probe tip and replacing the flexible gastroscope with a soft tether containing only wires for transmitting ultrasound signals, and show that 6-DOF localization and 5-DOF closed-loop control of the probe can be achieved with an external permanent magnet based on the fusion of internal inertial measurement and external magnetic field sensing data. The proposed method does not require complex structures or motions of the actuator and the probe compared with existing magnetic manipulation methods. We have conducted extensive experiments to validate the effectiveness of the framework in terms of localization accuracy, update rate, workspace size, and tracking accuracy. In addition, our results obtained on a realistic cardiac tissue-mimicking phantom show that the proposed framework is applicable in real conditions and can generally meet the requirements for tele-operated TEE acquisitions., Comment: Accepted by IEEE Transactions on Robotics
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- 2023
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212. Duet: Creating Harmony between Processors and Embedded FPGAs
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Li, Ang, Ning, August, and Wentzlaff, David
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Computer Science - Hardware Architecture - Abstract
The demise of Moore's Law has led to the rise of hardware acceleration. However, the focus on accelerating stable algorithms in their entirety neglects the abundant fine-grained acceleration opportunities available in broader domains and squanders host processors' compute power. This paper presents Duet, a scalable, manycore-FPGA architecture that promotes embedded FPGAs (eFPGA) to be equal peers with processors through non-intrusive, bi-directionally cache-coherent integration. In contrast to existing CPU-FPGA hybrid systems in which the processors play a supportive role, Duet unleashes the full potential of both the processors and the eFPGAs with two classes of post-fabrication enhancements: fine-grained acceleration, which partitions an application into small tasks and offloads the frequently-invoked, compute-intensive ones onto various small accelerators, leveraging the processors to handle dynamic control flow and less accelerable tasks; hardware augmentation, which employs eFPGA-emulated hardware widgets to improve processor efficiency or mitigate software overheads in certain execution models. An RTL-level implementation of Duet is developed to evaluate the architecture with high fidelity. Experiments using synthetic benchmarks show that Duet can reduce the processor-accelerator communication latency by up to 82% and increase the bandwidth by up to 9.5x. The RTL implementation is further evaluated with seven application benchmarks, achieving 1.5-24.9x speedup., Comment: Accepted to HPCA 2023
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- 2023
213. Enabling Augmented Segmentation and Registration in Ultrasound-Guided Spinal Surgery via Realistic Ultrasound Synthesis from Diagnostic CT Volume
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Li, Ang, Han, Jiayi, Zhao, Yongjian, Li, Keyu, and Liu, Li
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Electrical Engineering and Systems Science - Image and Video Processing ,Computer Science - Computer Vision and Pattern Recognition - Abstract
This paper aims to tackle the issues on unavailable or insufficient clinical US data and meaningful annotation to enable bone segmentation and registration for US-guided spinal surgery. While the US is not a standard paradigm for spinal surgery, the scarcity of intra-operative clinical US data is an insurmountable bottleneck in training a neural network. Moreover, due to the characteristics of US imaging, it is difficult to clearly annotate bone surfaces which causes the trained neural network missing its attention to the details. Hence, we propose an In silico bone US simulation framework that synthesizes realistic US images from diagnostic CT volume. Afterward, using these simulated bone US we train a lightweight vision transformer model that can achieve accurate and on-the-fly bone segmentation for spinal sonography. In the validation experiments, the realistic US simulation was conducted by deriving from diagnostic spinal CT volume to facilitate a radiation-free US-guided pedicle screw placement procedure. When it is employed for training bone segmentation task, the Chamfer distance achieves 0.599mm; when it is applied for CT-US registration, the associated bone segmentation accuracy achieves 0.93 in Dice, and the registration accuracy based on the segmented point cloud is 0.13~3.37mm in a complication-free manner. While bone US images exhibit strong echoes at the medium interface, it may enable the model indistinguishable between thin interfaces and bone surfaces by simply relying on small neighborhood information. To overcome these shortcomings, we propose to utilize a Long-range Contrast Learning Module to fully explore the Long-range Contrast between the candidates and their surrounding pixels., Comment: Submitted to IEEE Transactions on Automation Science and Engineering. Note that the abstract is shorter than that in the pdf file due to character limitations
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- 2023
214. Leveraging Large Language Models for Comprehensive Literature Review: An Exploration of RAND Corporation’s 20-Year Corpus
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Gulden, Timothy, Zhang, Li Ang, Geist, Edward, Awan, Jalal, Abdurahaman, Zara, Ahmadi, Mohammad, Yang, Zining, editor, and Krejci, Caroline, editor
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- 2024
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215. Geological Environmental Impact of Shallow Gas Release: A Case Study of Dayushan Island, East China Sea
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Chen, Yue, Xie, Yongqin, Yang, Jiaojiao, Duan, Xiaoyong, Yuan, Yilong, Li, Ang, Zheng, Hongjie, Förstner, Ulrich, Series Editor, Rulkens, Wim H., Series Editor, Wang, Sijing, editor, Huang, Runqiu, editor, Azzam, Rafig, editor, and Marinos, Vassilis P., editor
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- 2024
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216. Byzantine-Robust Aggregation for Federated Learning with Reinforcement Learning
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Yan, Sizheng, Du, Junping, Xue, Zhe, Li, Ang, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Zhang, Wenjie, editor, Tung, Anthony, editor, Zheng, Zhonglong, editor, Yang, Zhengyi, editor, Wang, Xiaoyang, editor, and Guo, Hongjie, editor
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- 2024
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217. Tensile Testing of Ni-Based Single Crystal Superalloys: What Is the Correct 'Point of View'?
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Utada, Satoshi, Han, Qinan, Li, Ang, Miquel, Melvin Z., Polatoğlu, Celal, Hasselqvist, Magnus, Tang, Yuanbo T., Reed, Roger C., Cormier, Jonathan, editor, Edmonds, Ian, editor, Forsik, Stephane, editor, Kontis, Paraskevas, editor, O’Connell, Corey, editor, Smith, Timothy, editor, Suzuki, Akane, editor, Tin, Sammy, editor, and Zhang, Jian, editor
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- 2024
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218. Acquiring Emotional Needs for Power Wheelchair Styling Oriented to Elderly Users
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Li, Ang, Liu, Weilin, Wan, Peng, Goos, Gerhard, Series Editor, Hartmanis, Juris, Founding Editor, van Leeuwen, Jan, Series Editor, Hutchison, David, Editorial Board Member, Kanade, Takeo, Editorial Board Member, Kittler, Josef, Editorial Board Member, Kleinberg, Jon M., Editorial Board Member, Kobsa, Alfred, Series Editor, Mattern, Friedemann, Editorial Board Member, Mitchell, John C., Editorial Board Member, Naor, Moni, Editorial Board Member, Nierstrasz, Oscar, Series Editor, Pandu Rangan, C., Editorial Board Member, Sudan, Madhu, Series Editor, Terzopoulos, Demetri, Editorial Board Member, Tygar, Doug, Editorial Board Member, Weikum, Gerhard, Series Editor, Vardi, Moshe Y, Series Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, and Duffy, Vincent G., editor
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- 2024
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219. YOLO-SA: An Efficient Object Detection Model Based on Self-attention Mechanism
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Li, Ang, song, Xiangyu, Sun, ShiJie, Zhang, Zhaoyang, Cai, Taotao, Song, Huansheng, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Song, Xiangyu, editor, Feng, Ruyi, editor, Chen, Yunliang, editor, Li, Jianxin, editor, and Min, Geyong, editor
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- 2024
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220. A FastMap-Based Framework for Efficiently Computing Top-K Projected Centrality
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Li, Ang, Stuckey, Peter, Koenig, Sven, Kumar, T. K. Satish, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Nicosia, Giuseppe, editor, Ojha, Varun, editor, La Malfa, Emanuele, editor, La Malfa, Gabriele, editor, Pardalos, Panos M., editor, and Umeton, Renato, editor
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- 2024
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221. Analysis of Urine-Formed Elements: Overview
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Zheng, Lei, Li, Mianyang, Li, Haixia, Zhou, Fuxian, Xie, Rongzhang, Li, Ang, Lin, Wanying, Zheng, Lei, editor, Yan, Lizhi, editor, and Zhang, Shimin, editor
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- 2024
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222. A Compound Online Local Path Planning and Situation-Aware Dynamic Obstacle Avoidance System for UAV
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Feng, Yongming, Jin, Ming, Li, Ang, Pan, Fengxing, Zhou, Yaoming, Chinese Society of Aeronautics and Astronautics, Chaari, Fakher, Series Editor, Gherardini, Francesco, Series Editor, Ivanov, Vitalii, Series Editor, Haddar, Mohamed, Series Editor, Cavas-Martínez, Francisco, Editorial Board Member, di Mare, Francesca, Editorial Board Member, Kwon, Young W., Editorial Board Member, Trojanowska, Justyna, Editorial Board Member, and Xu, Jinyang, Editorial Board Member
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- 2024
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223. Identification of the rare deep-dwelling goby Suruga fundicola Jordan & Snyder, 1901 (Gobiiformes, Gobiidae) from the Yellow Sea
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An, Changting, Li, Ang, Wang, Huang, Li, Busu, Liu, Kaiying, Sun, Hongyue, Liu, Shufang, Zhuang, Zhimeng, Laan, Richard, and Pensoft Publishers
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Acanthogobius-lineage ,Distribution ,Morphology ,mtDNA genes ,species identification ,taxonomy - Published
- 2023
224. Mentalizing in an economic games context is associated with enhanced activation and connectivity in the left temporoparietal junction.
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Chang, Li-Ang, Armaos, Konstantinos, Warns, Lotte, Ma de Sousa, Ava Q, Paauwe, Femke, Scholz, Christin, and Engelmann, Jan B
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Temporal Lobe ,Humans ,Magnetic Resonance Imaging ,Brain Mapping ,Communication ,Deception ,Theory of Mind ,Mentalization ,PPI ,dmPFC ,fMRI ,false-belief task ,mentalizing ,temporoparietal junction ,trust game ,ultimatum game ,Behavioral and Social Science ,Basic Behavioral and Social Science ,Neurosciences ,Psychology ,Cognitive Sciences ,Experimental Psychology - Abstract
Prior studies in Social Neuroeconomics have consistently reported activation in social cognition regions during interactive economic games, suggesting mentalizing during economic choice. Such mentalizing occurs during active participation in the game, as well as during passive observation of others' interactions. We designed a novel version of the classic false-belief task (FBT) in which participants read vignettes about interactions between agents in the ultimatum and trust games and were subsequently asked to infer the agents' beliefs. We compared activation patterns during the economic games FBT to those during the classic FBT using conjunction analyses. We find significant overlap in the left temporoparietal junction (TPJ) and dorsal medial prefrontal cortex, as well as the temporal pole (TP) during two task phases: belief formation and belief inference. Moreover, generalized Psychophysiological Interaction (gPPI) analyses show that during belief formation, the right TPJ is a target of both the left TPJ and the right TP seed regions, whereas during belief inferences all seed regions show interconnectivity with each other. These results indicate that across different task types and phases, mentalizing is associated with activation and connectivity across central nodes of the social cognition network. Importantly, this is the case for both the novel economic games and the classic FBTs.
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- 2023
225. A beta cell subset with enhanced insulin secretion and glucose metabolism is reduced in type 2 diabetes.
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Rubio-Navarro, Alfonso, Gómez-Banoy, Nicolás, Stoll, Lisa, Dündar, Friederike, Mawla, Alex, Ma, Lunkun, Cortada, Eric, Zumbo, Paul, Li, Ang, Reiterer, Moritz, Montoya-Oviedo, Nathalia, Homan, Edwin, Imai, Norihiro, Gilani, Ankit, Liu, Chengyang, Naji, Ali, Yang, Boris, Chong, Angie, Cohen, David, Chen, Shuibing, Cao, Jingli, Pitt, Geoffrey, Betel, Doron, Lo, James, and Huising, Mark
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Humans ,Mice ,Animals ,Diabetes Mellitus ,Type 2 ,Insulin Secretion ,Insulin ,Diabetes Mellitus ,Experimental ,Insulin-Secreting Cells ,Glucose - Abstract
The pancreatic islets are composed of discrete hormone-producing cells that orchestrate systemic glucose homeostasis. Here we identify subsets of beta cells using a single-cell transcriptomic approach. One subset of beta cells marked by high CD63 expression is enriched for the expression of mitochondrial metabolism genes and exhibits higher mitochondrial respiration compared with CD63lo beta cells. Human and murine pseudo-islets derived from CD63hi beta cells demonstrate enhanced glucose-stimulated insulin secretion compared with pseudo-islets from CD63lo beta cells. We show that CD63hi beta cells are diminished in mouse models of and in humans with type 2 diabetes. Finally, transplantation of pseudo-islets generated from CD63hi but not CD63lo beta cells into diabetic mice restores glucose homeostasis. These findings suggest that loss of a specific subset of beta cells may lead to diabetes. Strategies to reconstitute or maintain CD63hi beta cells may represent a potential anti-diabetic therapy.
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- 2023
226. Quantum algorithms for generator coordinate methods
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Zheng, Muqing, Peng, Bo, Wiebe, Nathan, Li, Ang, Yang, Xiu, and Kowalski, Karol
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Quantum Physics - Abstract
This paper discusses quantum algorithms for the generator coordinate method (GCM) that can be used to benchmark molecular systems. The GCM formalism defined by exponential operators with exponents defined through generators of the Fermionic U(N) Lie algebra (Thouless theorem) offers a possibility of probing large sub-spaces using low-depth quantum circuits. In the present studies, we illustrate the performance of the quantum algorithm for constructing a discretized form of the Hill-Wheeler equation for ground and excited state energies. We also generalize the standard GCM formulation to multi-product extension that when collective paths are properly probed, can systematically introduce higher rank effects and provide elementary mechanisms for symmetry purification when generator states break the spatial or spin symmetries. The GCM quantum algorithms also can be viewed as an alternative to existing variational quantum eigensolvers, where multi-step classical optimization algorithms are replaced by a single-step procedure for solving the Hill-Wheeler eigenvalue problem.
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- 2022
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227. Architectures for Multinode Superconducting Quantum Computers
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Ang, James, Carini, Gabriella, Chen, Yanzhu, Chuang, Isaac, DeMarco, Michael Austin, Economou, Sophia E., Eickbusch, Alec, Faraon, Andrei, Fu, Kai-Mei, Girvin, Steven M., Hatridge, Michael, Houck, Andrew, Hilaire, Paul, Krsulich, Kevin, Li, Ang, Liu, Chenxu, Liu, Yuan, Martonosi, Margaret, McKay, David C., Misewich, James, Ritter, Mark, Schoelkopf, Robert J., Stein, Samuel A., Sussman, Sara, Tang, Hong X., Tang, Wei, Tomesh, Teague, Tubman, Norm M., Wang, Chen, Wiebe, Nathan, Yao, Yong-Xin, Yost, Dillon C., and Zhou, Yiyu
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Quantum Physics - Abstract
Many proposals to scale quantum technology rely on modular or distributed designs where individual quantum processors, called nodes, are linked together to form one large multinode quantum computer (MNQC). One scalable method to construct an MNQC is using superconducting quantum systems with optical interconnects. However, a limiting factor of these machines will be internode gates, which may be two to three orders of magnitude noisier and slower than local operations. Surmounting the limitations of internode gates will require a range of techniques, including improvements in entanglement generation, the use of entanglement distillation, and optimized software and compilers, and it remains unclear how improvements to these components interact to affect overall system performance, what performance from each is required, or even how to quantify the performance of each. In this paper, we employ a `co-design' inspired approach to quantify overall MNQC performance in terms of hardware models of internode links, entanglement distillation, and local architecture. In the case of superconducting MNQCs with microwave-to-optical links, we uncover a tradeoff between entanglement generation and distillation that threatens to degrade performance. We show how to navigate this tradeoff, lay out how compilers should optimize between local and internode gates, and discuss when noisy quantum links have an advantage over purely classical links. Using these results, we introduce a roadmap for the realization of early MNQCs which illustrates potential improvements to the hardware and software of MNQCs and outlines criteria for evaluating the landscape, from progress in entanglement generation and quantum memory to dedicated algorithms such as distributed quantum phase estimation. While we focus on superconducting devices with optical interconnects, our approach is general across MNQC implementations., Comment: 23 pages, white paper
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- 2022
228. Speeding-up Symbol-Level Precoding Using Separable and Dual Optimizations
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Yang, Junwen, Li, Ang, Liao, Xuewen, and Masouros, Christos
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Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Symbol-level precoding (SLP) manipulates the transmitted signals to accurately exploit the multi-user interference (MUI) in the multi-user downlink. This enables that all the resultant interference contributes to correct detection, which is the so-called constructive interference (CI). Its performance superiority comes at the cost of solving a nonlinear optimization problem on a symbol-by-symbol basis, for which the resulting complexity becomes prohibitive in realistic wireless communication systems. In this paper, we investigate low-complexity SLP algorithms for both phase-shift keying (PSK) and quadrature amplitude modulation (QAM). Specifically, we first prove that the max-min SINR balancing (SB) SLP problem for PSK signaling is not separable, which is contrary to the power minimization (PM) SLP problem, and accordingly, existing decomposition methods are not applicable. Next, we establish an explicit duality between the PM-SLP and SB-SLP problems for PSK modulation. The proposed duality facilitates obtaining the solution to the SB-SLP given the solution to the PM-SLP without the need for one-dimension search, and vice versa. We then propose a closed-form power scaling algorithm to solve the SB-SLP via PM-SLP to take advantage of the separability of the PM-SLP. As for QAM modulation, we convert the PM-SLP problem into a separable equivalent optimization problem, and decompose the new problem into several simple parallel subproblems with closed-form solutions, leveraging the proximal Jacobian alternating direction method of multipliers (PJ-ADMM). We further prove that the proposed duality can be generalized to the multi-level modulation case, based on which a power scaling parallel inverse-free algorithm is also proposed to solve the SB-SLP for QAM signaling. Numerical results show that the proposed algorithms offer optimal performance with lower complexity than the state-of-the-art., Comment: 30 pages, 11 figures
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- 2022
229. Extreme Acceleration of Graph Neural Network-based Prediction Models for Quantum Chemistry
- Author
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Helal, Hatem, Firoz, Jesun, Bilbrey, Jenna, Krell, Mario Michael, Murray, Tom, Li, Ang, Xantheas, Sotiris, and Choudhury, Sutanay
- Subjects
Computer Science - Machine Learning ,Computer Science - Hardware Architecture ,Physics - Chemical Physics - Abstract
Molecular property calculations are the bedrock of chemical physics. High-fidelity \textit{ab initio} modeling techniques for computing the molecular properties can be prohibitively expensive, and motivate the development of machine-learning models that make the same predictions more efficiently. Training graph neural networks over large molecular databases introduces unique computational challenges such as the need to process millions of small graphs with variable size and support communication patterns that are distinct from learning over large graphs such as social networks. This paper demonstrates a novel hardware-software co-design approach to scale up the training of graph neural networks for molecular property prediction. We introduce an algorithm to coalesce the batches of molecular graphs into fixed size packs to eliminate redundant computation and memory associated with alternative padding techniques and improve throughput via minimizing communication. We demonstrate the effectiveness of our co-design approach by providing an implementation of a well-established molecular property prediction model on the Graphcore Intelligence Processing Units (IPU). We evaluate the training performance on multiple molecular graph databases with varying degrees of graph counts, sizes and sparsity. We demonstrate that such a co-design approach can reduce the training time of such molecular property prediction models from days to less than two hours, opening new possibilities for AI-driven scientific discovery.
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- 2022
230. More Generalized and Personalized Unsupervised Representation Learning In A Distributed System
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Yang, Yuewei, Sun, Jingwei, Li, Ang, Li, Hai, and Chen, Yiran
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Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Distributed, Parallel, and Cluster Computing - Abstract
Discriminative unsupervised learning methods such as contrastive learning have demonstrated the ability to learn generalized visual representations on centralized data. It is nonetheless challenging to adapt such methods to a distributed system with unlabeled, private, and heterogeneous client data due to user styles and preferences. Federated learning enables multiple clients to collectively learn a global model without provoking any privacy breach between local clients. On the other hand, another direction of federated learning studies personalized methods to address the local heterogeneity. However, work on solving both generalization and personalization without labels in a decentralized setting remains unfamiliar. In this work, we propose a novel method, FedStyle, to learn a more generalized global model by infusing local style information with local content information for contrastive learning, and to learn more personalized local models by inducing local style information for downstream tasks. The style information is extracted by contrasting original local data with strongly augmented local data (Sobel filtered images). Through extensive experiments with linear evaluations in both IID and non-IID settings, we demonstrate that FedStyle outperforms both the generalization baseline methods and personalization baseline methods in a stylized decentralized setting. Through comprehensive ablations, we demonstrate our design of style infusion and stylized personalization improve performance significantly.
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- 2022
231. Testing the phase transition parameters inside neutron stars with the production of protons and lambdas in relativistic heavy-ion collisions
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Li, Ang, Yong, Gao-Chan, and Zhang, Ying-Xun
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Nuclear Theory ,Astrophysics - High Energy Astrophysical Phenomena ,Nuclear Experiment - Abstract
We demonstrate the consistency of the quark deconfinement phase transition parameters in the beta-stable neutron star matter and in the nearly symmetric nuclear matter formed in heavy-ion collisions (HICs). We investigate the proton and $\Lambda$ flow in Au+Au collisions at 3 and 4.5 GeV/nucleon incident beam energies with the pure hadron cascade version of a multi-phase transport model. The phase transition in HICs and neutron stars is described based on a class of hybrid equations of state from the quark mean-field model for the hadronic phase and a constant-speed-of-sound parametrization for the high-density quark phase. The measurements of the anisotropic proton flow at 3 GeV/nucleon by the STAR collaboration favor a relatively low phase transition density lower than $\sim 2.5$ times saturation density indicated by the gravitational wave and electromagnetic observations of neutron stars. And the proton flow data at the higher energy of 4.5 GeV/nucleon can be used to effectively constrain the softness of high-density quark matter equations of state. Finally, compared to the proton flow, the $\Lambda$ flow is found to be less sensitive and not constraining to the equations of state., Comment: 7 pages, 7 figures, Phys. Rev. D (2023) accepted
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- 2022
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232. A Bayesian inference of relativistic mean-field model for neutron star matter from observation of NICER and GW170817/AT2017gfo
- Author
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Zhu, Zhenyu, Li, Ang, and Liu, Tong
- Subjects
Astrophysics - High Energy Astrophysical Phenomena ,Astrophysics - Solar and Stellar Astrophysics ,Nuclear Theory - Abstract
The observations of optical and near-infrared counterparts of binary neutron star mergers not only enrich our knowledge about the abundance of heavy elements in the Universe, or help reveal the remnant object just after the merger as generally known, but also can effectively constrain dense nuclear matter properties and the equation of state (EOS) in the interior of the merging stars. Following the relativistic mean-field description of nuclear matter, we perform the Bayesian inference of the EOS and the nuclear matter properties using the first multi-messenger event GW170817/AT2017gfo, together with the NICER mass-radius measurements of pulsars. The kilonova is described by a radiation-transfer model with the dynamical ejecta, and light curves connect with the EOS through the quasi-universal relations between the ejecta properties (the ejected mass, velocity, opacity or electron fraction) and binary parameters (the mass ratio and reduced tidal deformability). It is found that the posterior distributions of the reduced tidal deformability from the AT2017gfo analysis display a bimodal structure, with the first peak enhanced by the GW170817 data, leading to slightly softened posterior EOSs, while the second peak cannot be achieved by a nuclear EOS with saturation properties in their empirical ranges. The inclusion of NICER data in our analyses results in stiffened EOS posterior because of the massive pulsar PSR J0740+6620. We give results at nuclear saturation density for the nuclear incompressibility, the symmetry energy and its slope, as well as the nucleon effective mass, from our analysis of those observational data., Comment: Added discussions of PREX-II and GW190814, accepted by APJ
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- 2022
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233. Probabilities of Causation: Role of Observational Data
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Li, Ang and Pearl, Judea
- Subjects
Computer Science - Artificial Intelligence - Abstract
Probabilities of causation play a crucial role in modern decision-making. Pearl defined three binary probabilities of causation, the probability of necessity and sufficiency (PNS), the probability of sufficiency (PS), and the probability of necessity (PN). These probabilities were then bounded by Tian and Pearl using a combination of experimental and observational data. However, observational data are not always available in practice; in such a case, Tian and Pearl's Theorem provided valid but less effective bounds using pure experimental data. In this paper, we discuss the conditions that observational data are worth considering to improve the quality of the bounds. More specifically, we defined the expected improvement of the bounds by assuming the observational distributions are uniformly distributed on their feasible interval. We further applied the proposed theorems to the unit selection problem defined by Li and Pearl.
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- 2022
234. Learning Probabilities of Causation from Finite Population Data
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Li, Ang, Jiang, Song, Sun, Yizhou, and Pearl, Judea
- Subjects
Computer Science - Machine Learning ,Computer Science - Artificial Intelligence ,Statistics - Methodology - Abstract
This paper deals with the problem of learning the probabilities of causation of subpopulations given finite population data. The tight bounds of three basic probabilities of causation, the probability of necessity and sufficiency (PNS), the probability of sufficiency (PS), and the probability of necessity (PN), were derived by Tian and Pearl. However, obtaining the bounds for each subpopulation requires experimental and observational distributions of each subpopulation, which is usually impractical to estimate given finite population data. We propose a machine learning model that helps to learn the bounds of the probabilities of causation for subpopulations given finite population data. We further show by a simulated study that the machine learning model is able to learn the bounds of PNS for 32768 subpopulations with only knowing roughly 500 of them from the finite population data.
- Published
- 2022
235. NOMA Made Practical: Removing the Receive SIC Processing through Interference Exploitation
- Author
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Salem, Abdelhamid, Tong, Xiao, Li, Ang, and Masouros, Christos
- Subjects
Computer Science - Information Theory ,Electrical Engineering and Systems Science - Signal Processing - Abstract
Non-orthogonal multiple access (NOMA) is a powerful transmission technique that enhances the spectral efficiency of communication links, and is being investigated for 5G standards and beyond. A major drawback of NOMA is the need to apply successive interference cancellation (SIC) at the receiver on a symbol-by-symbol basis, which limits its practicality. To circumvent this, in this paper a novel constructive multiple access (CoMA) scheme is proposed and investigated. CoMA aligns the superimposed signals to the different users constructively to the signal of interest. Since the superimposed signal aligns with the data signal, there is no need to remove it at the receiver using SIC. Accordingly, SIC component can be removed at the receiver side. In this regard and in order to provide a comprehensive investigation and comparison, different optimization problems for user paring NOMA multiple-input-single-output (MISO) systems are considered. Firstly, an optimal precoder to minimize the total transmission power for CoMA subject to a quality-of-service constraint is obtained, and compared to conventional NOMA. Then, a precoder that minimizes the CoMA symbol error rate (SER) subject to power constraint is investigated. Further, the computational complexity of CoMA is considered and compared with conventional NOMA scheme in terms of total number of complex operations. The results in this paper prove the superiority of the proposed CoMA scheme over the conventional NOMA technique, and demonstrate that CoMA is an attractive solution for user paring NOMA MISO systems with low number of BS antennas, while circumventing the receive SIC complexity.
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- 2022
236. Unit Selection: Learning Benefit Function from Finite Population Data
- Author
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Li, Ang, Jiang, Song, Sun, Yizhou, and Pearl, Judea
- Subjects
Computer Science - Artificial Intelligence - Abstract
The unit selection problem is to identify a group of individuals who are most likely to exhibit a desired mode of behavior, for example, selecting individuals who would respond one way if incentivized and a different way if not. The unit selection problem consists of evaluation and search subproblems. Li and Pearl defined the "benefit function" to evaluate the average payoff of selecting a certain individual with given characteristics. The search subproblem is then to design an algorithm to identify the characteristics that maximize the above benefit function. The hardness of the search subproblem arises due to the large number of characteristics available for each individual and the sparsity of the data available in each cell of characteristics. In this paper, we present a machine learning framework that uses the bounds of the benefit function that are estimable from the finite population data to learn the bounds of the benefit function for each cell of characteristics. Therefore, we could easily obtain the characteristics that maximize the benefit function.
- Published
- 2022
237. QuCNN : A Quantum Convolutional Neural Network with Entanglement Based Backpropagation
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Stein, Samuel A., Mao, Ying, Ang, James, and Li, Ang
- Subjects
Quantum Physics ,Computer Science - Machine Learning - Abstract
Quantum Machine Learning continues to be a highly active area of interest within Quantum Computing. Many of these approaches have adapted classical approaches to the quantum settings, such as QuantumFlow, etc. We push forward this trend and demonstrate an adaption of the Classical Convolutional Neural Networks to quantum systems - namely QuCNN. QuCNN is a parameterised multi-quantum-state based neural network layer computing similarities between each quantum filter state and each quantum data state. With QuCNN, back propagation can be achieved through a single-ancilla qubit quantum routine. QuCNN is validated by applying a convolutional layer with a data state and a filter state over a small subset of MNIST images, comparing the back propagated gradients, and training a filter state against an ideal target state.
- Published
- 2022
238. Cross-modal Search Method of Technology Video based on Adversarial Learning and Feature Fusion
- Author
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Liu, Xiangbin, Du, Junping, Liang, Meiyu, and Li, Ang
- Subjects
Computer Science - Information Retrieval - Abstract
Technology videos contain rich multi-modal information. In cross-modal information search, the data features of different modalities cannot be compared directly, so the semantic gap between different modalities is a key problem that needs to be solved. To address the above problems, this paper proposes a novel Feature Fusion based Adversarial Cross-modal Retrieval method (FFACR) to achieve text-to-video matching, ranking and searching. The proposed method uses the framework of adversarial learning to construct a video multimodal feature fusion network and a feature mapping network as generator, a modality discrimination network as discriminator. Multi-modal features of videos are obtained by the feature fusion network. The feature mapping network projects multi-modal features into the same semantic space based on semantics and similarity. The modality discrimination network is responsible for determining the original modality of features. Generator and discriminator are trained alternately based on adversarial learning, so that the data obtained by the feature mapping network is semantically consistent with the original data and the modal features are eliminated, and finally the similarity is used to rank and obtain the search results in the semantic space. Experimental results demonstrate that the proposed method performs better in text-to-video search than other existing methods, and validate the effectiveness of the method on the self-built datasets of technology videos.
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- 2022
239. Unit Selection: Case Study and Comparison with A/B Test Heuristic
- Author
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Li, Ang and Pearl, Judea
- Subjects
Computer Science - Artificial Intelligence ,Computer Science - Discrete Mathematics - Abstract
The unit selection problem defined by Li and Pearl identifies individuals who have desired counterfactual behavior patterns, for example, individuals who would respond positively if encouraged and would not otherwise. Li and Pearl showed by example that their unit selection model is beyond the A/B test heuristics. In this paper, we reveal the essence of the A/B test heuristics, which are exceptional cases of the benefit function defined by Li and Pearl. Furthermore, We provided more simulated use cases of Li-Pearl's unit selection model to help decision-makers apply their model correctly, explaining that A/B test heuristics are generally problematic.
- Published
- 2022
240. Probabilities of Causation: Adequate Size of Experimental and Observational Samples
- Author
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Li, Ang, Mao, Ruirui, and Pearl, Judea
- Subjects
Computer Science - Artificial Intelligence ,Computer Science - Discrete Mathematics - Abstract
The probabilities of causation are commonly used to solve decision-making problems. Tian and Pearl derived sharp bounds for the probability of necessity and sufficiency (PNS), the probability of sufficiency (PS), and the probability of necessity (PN) using experimental and observational data. The assumption is that one is in possession of a large enough sample to permit an accurate estimation of the experimental and observational distributions. In this study, we present a method for determining the sample size needed for such estimation, when a given confidence interval (CI) is specified. We further show by simulation that the proposed sample size delivered stable estimations of the bounds of PNS.
- Published
- 2022
241. Scientific and Technological News Recommendation Based on Knowledge Graph with User Perception
- Author
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Zeng, Yuyao, Du, Junping, Xue, Zhe, and Li, Ang
- Subjects
Computer Science - Information Retrieval - Abstract
Existing research usually utilizes side information such as social network or item attributes to improve the performance of collaborative filtering-based recommender systems. In this paper, the knowledge graph with user perception is used to acquire the source of side information. We proposed KGUPN to address the limitations of existing embedding-based and path-based knowledge graph-aware recommendation methods, an end-to-end framework that integrates knowledge graph and user awareness into scientific and technological news recommendation systems. KGUPN contains three main layers, which are the propagation representation layer, the contextual information layer and collaborative relation layer. The propagation representation layer improves the representation of an entity by recursively propagating embeddings from its neighbors (which can be users, news, or relationships) in the knowledge graph. The contextual information layer improves the representation of entities by encoding the behavioral information of entities appearing in the news. The collaborative relation layer complements the relationship between entities in the news knowledge graph. Experimental results on real-world datasets show that KGUPN significantly outperforms state-of-the-art baselines in scientific and technological news recommendation.
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- 2022
242. Embedding Representation of Academic Heterogeneous Information Networks Based on Federated Learning
- Author
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Wang, Junfu, Li, Yawen, Liang, Meiyu, and Li, Ang
- Subjects
Computer Science - Information Retrieval - Abstract
Academic networks in the real world can usually be portrayed as heterogeneous information networks (HINs) with multi-type, universally connected nodes and multi-relationships. Some existing studies for the representation learning of homogeneous information networks cannot be applicable to heterogeneous information networks because of the lack of ability to issue heterogeneity. At the same time, data has become a factor of production, playing an increasingly important role. Due to the closeness and blocking of businesses among different enterprises, there is a serious phenomenon of data islands. To solve the above challenges, aiming at the data information of scientific research teams closely related to science and technology, we proposed an academic heterogeneous information network embedding representation learning method based on federated learning (FedAHE), which utilizes node attention and meta path attention mechanism to learn low-dimensional, dense and real-valued vector representations while preserving the rich topological information and meta-path-based semantic information of nodes in network. Moreover, we combined federated learning with the representation learning of HINs composed of scientific research teams and put forward a federal training mechanism based on dynamic weighted aggregation of parameters (FedDWA) to optimize the node embeddings of HINs. Through sufficient experiments, the efficiency, accuracy and feasibility of our proposed framework are demonstrated.
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- 2022
243. Scientific Paper Classification Based on Graph Neural Network with Hypergraph Self-attention Mechanism
- Author
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Liu, Jiashun, Xue, Zhe, and Li, Ang
- Subjects
Computer Science - Information Retrieval - Abstract
The number of scientific papers has increased rapidly in recent years. How to make good use of scientific papers for research is very important. Through the high-quality classification of scientific papers, researchers can quickly find the resource content they need from the massive scientific resources. The classification of scientific papers will effectively help researchers filter redundant information, obtain search results quickly and accurately, and improve the search quality, which is necessary for scientific resource management. This paper proposed a science-technique paper classification method based on hypergraph neural network(SPHNN). In the heterogeneous information network of scientific papers, the repeated high-order subgraphs are modeled as hyperedges composed of multiple related nodes. Then the whole heterogeneous information network is transformed into a hypergraph composed of different hyperedges. The graph convolution operation is carried out on the hypergraph structure, and the hyperedges self-attention mechanism is introduced to aggregate different types of nodes in the hypergraph, so that the final node representation can effectively maintain high-order nearest neighbor relationships and complex semantic information. Finally, by comparing with other methods, we proved that the model proposed in this paper has improved its performance.
- Published
- 2022
244. Rethinking Normalization Methods in Federated Learning
- Author
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Du, Zhixu, Sun, Jingwei, Li, Ang, Chen, Pin-Yu, Zhang, Jianyi, Li, Hai "Helen", and Chen, Yiran
- Subjects
Computer Science - Machine Learning - Abstract
Federated learning (FL) is a popular distributed learning framework that can reduce privacy risks by not explicitly sharing private data. In this work, we explicitly uncover external covariate shift problem in FL, which is caused by the independent local training processes on different devices. We demonstrate that external covariate shifts will lead to the obliteration of some devices' contributions to the global model. Further, we show that normalization layers are indispensable in FL since their inherited properties can alleviate the problem of obliterating some devices' contributions. However, recent works have shown that batch normalization, which is one of the standard components in many deep neural networks, will incur accuracy drop of the global model in FL. The essential reason for the failure of batch normalization in FL is poorly studied. We unveil that external covariate shift is the key reason why batch normalization is ineffective in FL. We also show that layer normalization is a better choice in FL which can mitigate the external covariate shift and improve the performance of the global model. We conduct experiments on CIFAR10 under non-IID settings. The results demonstrate that models with layer normalization converge fastest and achieve the best or comparable accuracy for three different model architectures., Comment: Submitted to DistributedML'22 workshop
- Published
- 2022
- Full Text
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245. First record of abnormal body coloration in a rockfish Sebastes koreanus (Scorpaenoidei: Sebastidae) from coastal water of China based on morphological characteristics and DNA barcoding
- Author
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Li, Ang, Wang, Huan, An, Changting, and Liu, Shufang
- Published
- 2024
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- View/download PDF
246. SPCC: A superpixel and color clustering based camouflage assessment
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Li, Ning, Qi, Wangjing, Jiao, Jichao, Li, Ang, Li, Liqun, and Xu, Wei
- Published
- 2024
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247. Interface catalytic reduction of alumina by nickle for the aluminum nanowire growth: Dynamics observed by in situ TEM
- Author
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Wang, Zichun, Wang, Dan, Li, Ang, Wang, Lizhuo, Han, Xiaodong, Jiang, Yijiao, Chen, Jianfeng, and Huang, Jun
- Published
- 2024
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248. Negative mixing enthalpy solid solutions deliver high strength and ductility
- Author
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An, Zibing, Li, Ang, Mao, Shengcheng, Yang, Tao, Zhu, Lingyu, Wang, Rui, Wu, Zhaoxuan, Zhang, Bin, Shao, Ruiwen, Jiang, Cheng, Cao, Boxuan, Shi, Caijuan, Ren, Yang, Liu, Cheng, Long, Haibo, Zhang, Jianfei, Li, Wei, He, Feng, Sun, Ligang, Zhao, Junbo, Yang, Luyan, Zhou, Xiaoyuan, Wei, Xiao, Chen, Yunmin, Lu, Zhouguang, Ren, Fuzeng, Liu, Chain-Tsuan, Zhang, Ze, and Han, Xiaodong
- Published
- 2024
- Full Text
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249. Uncertainty Quantification in Tomographic Inversion of Near-Surface Seismic Refraction Data
- Author
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Li, Ang, Grana, Dario, Parsekian, Andrew D., and Carr, Brad
- Published
- 2024
- Full Text
- View/download PDF
250. Discovering latent target subdomains for domain adaptive semantic segmentation via style clustering
- Author
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Li, Ang, Wang, Shengsheng, Zhao, Xin, and Chen, Juan
- Published
- 2024
- Full Text
- View/download PDF
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