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Yong Liu 0018
Person information
- affiliation: Renmin University of China, China
- affiliation (former): Chinese Academy of Sciences, Institute of Information Engineering, Beijing, China
- affiliation (PhD 2016): Tianjin University, School of Computer Science and Technology, Tianjin, China
Other persons with the same name
- Yong Liu — disambiguation page
- Yong Liu 0001
— Outreach Corporation, Seattle, WA, USA (and 3 more) - Yong Liu 0002
— Chinese Academy of Sciences, Institute of Automation, Brainnetome Center, Beijing, China - Yong Liu 0003
— Peking University, College of Environmental Science and Engineering, Beijing, China - Yong Liu 0004
— Nanjing University of Science and Technology, School of Computer Science and Engineering, China - Yong Liu 0005
— Southwest Jiaotong University, Key Laboratory of Information Coding and Transmission, Chengdu, China - Yong Liu 0006
— University of Tennessee, Knoxville, TN, USA - Yong Liu 0007
— Zhejiang University, Institute of Cyber-Systems and Control, State Key Laboratory of Industrial Control Technology, Hangzhou, China (and 1 more) - Yong Liu 0008
— Wenzhou Medical University, School of Ophthalmology and Optometry, China - Yong Liu 0009
— Nanyang Technological University, School of Electrical and Electronic Engineering, Singapore
- Yong Liu 0010
— Aalto University School of Business, Department of Information and Service Economy, Aalto, Finland (and 3 more) - Yong Liu 0011
— Jilin University, School of Mechanical Science and Engineering, Changchun, China - Yong Liu 0012
— The University of Aizu, Aizu-Wakamatsu, Japan (and 4 more) - Yong Liu 0013
— New York University, Tandon School of Engineering, Department of Electrical and Computer Engineering, Brooklyn, NY, USA (and 1 more) - Yong Liu 0014 — Texas A&M University, College Station, USA
- Yong Liu 0015 — Nottingham Trent University, UK
- Yong Liu 0016
— Tianjin University, School of Electrical and Information Engineering, Tianjin, China - Yong Liu 0017
— National University of Defense Technology, School of Electronic Science, Changsha, China - Yong Liu 0019
— University of Science and Technology of China, School of Mathematical Sciences, Hefei, China - Yong Liu 0020
— Huawei Noah's Ark Lab, Singapore (and 1 more) - Yong Liu 0021
— Beijing Polytechnic, School of Telecommunication Engineering, Beijing, China - Yong Liu 0022
— Jiangnan University, School of Business, Wuxi, China - Yong Liu 0023 — Shanghai Jiao Tong University, China (and 3 more)
- Yong Liu 0024 — Indiana University, Department of Computer Science, Bloomington, IN, USA
- Yong Liu 0025 — Northwestern Polytechnical University, College of Automation, Xi'an, China
- Yong Liu 0026
— A*STAR, Artificial Intelligence Initiative, Singapore (and 2 more) - Yong Liu 0027 — Beijing University of Posts and Telecommunications, School of Information and Communication Engineering, Beijing Key Laboratory of Network System Architecture and Convergence, China
- Yong Liu 0028 — Chongqing Jiaotong University, School of Economics and Management, Chongqing, China
- Yong Liu 0029
— Heilongjiang University, China - Yong Liu 0030
— University of Chemical Technology, College of Information Science and Technology, Beijing, China - Yong Liu 0031
— Xi'an Jiaotong University, National Key Laboratory of Human-Machine Hybrid Augmented Intelligence, China (and 1 more) - Yong Liu 0032
— YouTu Lab, Tencent, Shanghai, China (and 1 more) - Yong Liu 0033
— Tsinghua University, Tsinghua Shenzhen International Graduate School, China - Yong Liu 0034
— University of Science and Technology of China, Department of Mathematics, Hefei, China - Yong Liu 0035
— Shanghai Jiao Tong University, Shanghai, China - Yong Liu 0036
— National University of Defense Technology, Changsha, China - Yong Liu 0037
— Xidian University, Xi'an, China - Yong Liu 0038
— Xidian University, Xi'an, China - Yong Liu 0039
— Wuhan Maritime Communications Research Institute, China - Yong Liu 0040
— Technical University of Denmark, Kongens Lyngby, Denmark - Yong Liu 0041
— Alibaba Cloud, Alibaba Group, Hangzhou, China - Yong Liu 0042
— Changzhou College of Information Technology, Changzhou, Jiangsu, China - Yong Liu 0043
— Xiamen Institute of Technology, Xiamen, China - Yong Liu 0044
— Zhejiang Sci-Tech University, Hangzhou, China - Yong Liu 0045
— Hangzhou Normal University, Hangzhou, China - Yong Liu 0046
— Xi'an University of Posts and Telecommunications, China - Yong Liu 0047
— National University of Singapore, Singapore - Yong Liu 0048
— Qingdao University of Science and Technology, Qingdao, China - Yong Liu 0049
— Qi An Xin Technology Group Inc, China - Yong Liu 0050
— China State Construction International Investments (Guangdong) Limited, Guangzhou, China
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2020 – today
- 2025
[j32]Jiechao Yang
, Yong Liu
, Wei Wang, Haoran Wu, Zhiyuan Chen
, Xibo Ma
:
PATNAS: A Path-Based Training-Free Neural Architecture Search. IEEE Trans. Pattern Anal. Mach. Intell. 47(3): 1484-1500 (2025)
[j31]Rong Yin
, Ruyue Liu
, Xiaoshuai Hao, Xingrui Zhou
, Yong Liu
, Can Ma, Weiping Wang
:
Multi-Modal Molecular Representation Learning via Structure Awareness. IEEE Trans. Image Process. 34: 3225-3238 (2025)
[j30]Ruyue Liu
, Rong Yin
, Yong Liu
, Xiaoshuai Hao, Haichao Shi
, Can Ma, Weiping Wang
:
AS-GCL: Asymmetric Spectral Augmentation on Graph Contrastive Learning. IEEE Trans. Multim. 27: 7810-7820 (2025)
[j29]Jian Li
, Yong Liu
, Weiping Wang
:
Optimal Convergence for Agnostic Kernel Learning With Random Features. IEEE Trans. Neural Networks Learn. Syst. 36(1): 1779-1789 (2025)
[c94]Xiao Zhang, Sunhao Dai, Jun Xu, Yong Liu, Zhenhua Dong:
AdaO2B: Adaptive Online to Batch Conversion for Out-of-Distribution Generalization. AAAI 2025: 22596-22604
[c93]Wei Yao, Wenkai Yang, Ziqiao Wang, Yankai Lin, Yong Liu:
Revisiting Weak-to-Strong Generalization in Theory and Practice: Reverse KL vs. Forward KL. ACL (Findings) 2025: 2860-2888
[c92]Sheng Ouyang, Yulan Hu, Ge Chen, Qingyang Li, Fuzheng Zhang, Yong Liu:
Towards Reward Fairness in RLHF: From a Resource Allocation Perspective. ACL (1) 2025: 3247-3259
[c91]Chen Qian, Dongrui Liu, Jie Zhang, Yong Liu, Jing Shao:
The Tug of War Within: Mitigating the Fairness-Privacy Conflicts in Large Language Models. ACL (1) 2025: 12066-12095
[c90]Jingyu Liu, JingquanPeng JingquanPeng, Xiaopeng Wu, Xubin Li, Tiezheng Ge, Bo Zheng, Yong Liu:
Do not Abstain! Identify and Solve the Uncertainty. ACL (1) 2025: 17177-17197
[c89]Yulan Hu, Sheng Ouyang, Zhirui Yang, Yong Liu:
Contrastive Pre-Training and Post-Tuning for Heterogeneous Graph Learning. ICASSP 2025: 1-5
[c88]Zeyu Gan, Yong Liu:
Towards a Theoretical Understanding of Synthetic Data in LLM Post-Training: A Reverse-Bottleneck Perspective. ICLR 2025
[c87]Zixuan Gong, Xiaolin Hu, Huayi Tang, Yong Liu:
Towards Auto-Regressive Next-Token Prediction: In-context Learning Emerges from Generalization. ICLR 2025
[c86]Pengwei Tang, Xiaolin Hu, Yong Liu:
ADePT: Adaptive Decomposed Prompt Tuning for Parameter-Efficient Fine-tuning. ICLR 2025
[c85]Wenkai Yang, Shiqi Shen, Guangyao Shen, Wei Yao, Yong Liu, Gong Zhi, Yankai Lin, Ji-Rong Wen:
Super(ficial)-alignment: Strong Models May Deceive Weak Models in Weak-to-Strong Generalization. ICLR 2025
[c84]Jie Zhang, Dongrui Liu, Chen Qian, Linfeng Zhang, Yong Liu, Yu Qiao, Jing Shao:
REEF: Representation Encoding Fingerprints for Large Language Models. ICLR 2025
[c83]Wei Yao, Zeliang Zhang, Huayi Tang, Yong Liu:
Understanding Model Ensemble in Transferable Adversarial Attack. ICML 2025
[c82]Zeyu Gan, Yun Liao, Yong Liu:
Rethinking External Slow-Thinking: From Snowball Errors to Probability of Correct Reasoning. ICML 2025
[c81]Yulan Hu
, Zhirui Yang
, Sheng Ouyang
, Yong Liu
:
Adversarial Masked Graph Autoencoders for Improved Graph Representation Learning. ICMR 2025: 478-486
[i89]Pengwei Tang, Xiaolin Hu
, Yong Liu:
ADePT: Adaptive Decomposed Prompt Tuning for Parameter-Efficient Fine-tuning. CoRR abs/2501.03291 (2025)
[i88]Yulan Hu, Sheng Ouyang, Yong Liu:
Coarse-to-Fine Process Reward Modeling for Enhanced Mathematical Reasoning. CoRR abs/2501.13622 (2025)
[i87]Zeyu Gan, Yun Liao, Yong Liu:
Rethinking External Slow-Thinking: From Snowball Errors to Probability of Correct Reasoning. CoRR abs/2501.15602 (2025)
[i86]Wei Yao, Wenkai Yang, Ziqiao Wang, Yankai Lin, Yong Liu:
Understanding the Capabilities and Limitations of Weak-to-Strong Generalization. CoRR abs/2502.01458 (2025)
[i85]Xinhao Yao, Ruifeng Ren, Yun Liao, Yong Liu:
Unveiling the Mechanisms of Explicit CoT Training: How Chain-of-Thought Enhances Reasoning Generalization. CoRR abs/2502.04667 (2025)
[i84]Wei Yao, Wenkai Yang, Ziqiao Wang, Yankai Lin, Yong Liu:
Revisiting Weak-to-Strong Generalization in Theory and Practice: Reverse KL vs. Forward KL. CoRR abs/2502.11107 (2025)
[i83]Hao Yi, Qingyang Li, Yulan Hu, Fuzheng Zhang, Di Zhang, Yong Liu:
SPPD: Self-training with Process Preference Learning Using Dynamic Value Margin. CoRR abs/2502.13516 (2025)
[i82]Ruyue Liu, Rong Yin, Yong Liu, Xiaoshuai Hao, Haichao Shi, Can Ma, Weiping Wang:
AS-GCL: Asymmetric Spectral Augmentation on Graph Contrastive Learning. CoRR abs/2502.13525 (2025)
[i81]Zixuan Gong, Xiaolin Hu, Huayi Tang, Yong Liu:
Towards Auto-Regressive Next-Token Prediction: In-Context Learning Emerges from Generalization. CoRR abs/2502.17024 (2025)
[i80]Pengwei Tang, Yong Liu, Dongjie Zhang, Xing Wu, Debing Zhang:
LoRA-Null: Low-Rank Adaptation via Null Space for Large Language Models. CoRR abs/2503.02659 (2025)
[i79]Qijiong Liu, Jieming Zhu, Lu Fan, Kun Wang, Hengchang Hu, Wei Guo, Yong Liu, Xiao-Ming Wu:
Benchmarking LLMs in Recommendation Tasks: A Comparative Evaluation with Conventional Recommenders. CoRR abs/2503.05493 (2025)
[i78]Ruifeng Ren, Yong Liu:
Revisiting Transformers through the Lens of Low Entropy and Dynamic Sparsity. CoRR abs/2504.18929 (2025)
[i77]Rong Yin, Ruyue Liu, Xiaoshuai Hao, Xingrui Zhou, Yong Liu, Can Ma, Weiping Wang:
Multi-Modal Molecular Representation Learning via Structure Awareness. CoRR abs/2505.05877 (2025)
[i76]Sheng Ouyang, Yulan Hu, Ge Chen, Qingyang Li, Fuzheng Zhang, Yong Liu:
Towards Reward Fairness in RLHF: From a Resource Allocation Perspective. CoRR abs/2505.23349 (2025)
[i75]Gengze Xu, Wei Yao, Ziqiao Wang, Yong Liu:
On the Emergence of Weak-to-Strong Generalization: A Bias-Variance Perspective. CoRR abs/2505.24313 (2025)
[i74]Jingyu Liu, Jingquan Peng, Xiaopeng Wu, Xubin Li, Tiezheng Ge, Bo Zheng, Yong Liu:
Do not Abstain! Identify and Solve the Uncertainty. CoRR abs/2506.00780 (2025)
[i73]Chen Qian, Dongrui Liu, Haochen Wen, Zhen Bai, Yong Liu, Jing Shao:
Demystifying Reasoning Dynamics with Mutual Information: Thinking Tokens are Information Peaks in LLM Reasoning. CoRR abs/2506.02867 (2025)
[i72]Wei Yao, Gengze Xu, Huayi Tang, Wenkai Yang, Donglin Di, Ziqiao Wang, Yong Liu:
On Weak-to-Strong Generalization and f-Divergence. CoRR abs/2506.03109 (2025)
[i71]Zeyu Gan, Hao Yi, Yong Liu:
CoT-Space: A Theoretical Framework for Internal Slow-Thinking via Reinforcement Learning. CoRR abs/2509.04027 (2025)
[i70]Huayi Tang, Yong Liu:
PAC-Bayesian Generalization Bounds for Graph Convolutional Networks on Inductive Node Classification. CoRR abs/2509.06600 (2025)
[i69]Jingyu Liu, Xiaopeng Wu, Jingquan Peng, Kehan Chen, Chuan Yu, Lizhong Ding, Yong Liu:
Rethinking Reward Miscalibration of GRPO in Agentic RL. CoRR abs/2509.23870 (2025)
[i68]Ruyue Liu, Rong Yin, Xiangzhen Bo, Xiaoshuai Hao, Yong Liu, Jinwen Zhong, Can Ma, Weiping Wang:
SSTAG: Structure-Aware Self-Supervised Learning Method for Text-Attributed Graphs. CoRR abs/2510.01248 (2025)
[i67]Xinhao Yao, Lu Yu, Xiaolin Hu, Fengwei Teng, Qing Cui, Jun Zhou, Yong Liu:
The Debate on RLVR Reasoning Capability Boundary: Shrinkage, Expansion, or Both? A Two-Stage Dynamic View. CoRR abs/2510.04028 (2025)
[i66]Ruifeng Ren, Sheng Ouyang, Huayi Tang, Yong Liu:
Transformers as Intrinsic Optimizers: Forward Inference through the Energy Principle. CoRR abs/2511.00907 (2025)- 2024
[j28]Yilin Kang
, Jian Li
, Yong Liu, Weiping Wang
:
Towards sharper excess risk bounds for differentially private pairwise learning. Neurocomputing 610: 128610 (2024)
[j27]Yun Liao, Yong Liu
, Shizhong Liao, Qinghua Hu, Jianwu Dang:
Theoretical analysis of divide-and-conquer ERM: From the perspective of multi-view. Inf. Fusion 103: 102087 (2024)
[j26]Xunyu Zhu
, Jian Li
, Yong Liu, Can Ma, Weiping Wang
:
Distilling mathematical reasoning capabilities into Small Language Models. Neural Networks 179: 106594 (2024)
[j25]Weixuan Liang
, Chang Tang
, Xinwang Liu
, Yong Liu
, Jiyuan Liu
, En Zhu
, Kunlun He
:
On the Consistency and Large-Scale Extension of Multiple Kernel Clustering. IEEE Trans. Pattern Anal. Mach. Intell. 46(10): 6935-6947 (2024)
[j24]Ruyue Liu, Rong Yin
, Yong Liu, Weiping Wang
:
Unbiased and augmentation-free self-supervised graph representation learning. Pattern Recognit. 149: 110274 (2024)
[j23]Baiying Lei
, Yu Liang
, Jiayi Xie, You Wu, Enmin Liang, Yong Liu, Peng Yang
, Tianfu Wang, Chuan-Ming Liu, Jichen Du, Xiaohua Xiao, Shuqiang Wang
:
Hybrid federated learning with brain-region attention network for multi-center Alzheimer's disease detection. Pattern Recognit. 153: 110423 (2024)
[j22]Jian Li
, Yong Liu
, Weiping Wang
:
Optimal Rates for Agnostic Distributed Learning. IEEE Trans. Inf. Theory 70(4): 2759-2778 (2024)
[j21]Wei Yao, Zhanke Zhou, Zhicong Li, Bo Han, Yong Liu:
Understanding Fairness Surrogate Functions in Algorithmic Fairness. Trans. Mach. Learn. Res. 2024 (2024)
[j20]Bojian Wei
, Jian Li
, Yong Liu
, Weiping Wang
:
Non-IID Federated Learning With Sharper Risk Bound. IEEE Trans. Neural Networks Learn. Syst. 35(5): 6906-6917 (2024)
[c80]Zhirui Yang, Yulan Hu, Sheng Ouyang, Jingyu Liu, Shuqiang Wang, Xibo Ma, Wenhan Wang, Hanjing Su, Yong Liu:
WaveNet: Tackling Non-stationary Graph Signals via Graph Spectral Wavelets. AAAI 2024: 9287-9295
[c79]Jian Li, Yong Liu, Weiping Wang
:
High-Dimensional Analysis for Generalized Nonlinear Regression: From Asymptotics to Algorithm. AAAI 2024: 13500-13508
[c78]Jian Li, Yong Liu, Weiping Wang
:
FedNS: A Fast Sketching Newton-Type Algorithm for Federated Learning. AAAI 2024: 13509-13517
[c77]Ruyue Liu, Rong Yin, Yong Liu, Weiping Wang
:
ASWT-SGNN: Adaptive Spectral Wavelet Transform-Based Self-Supervised Graph Neural Network. AAAI 2024: 13990-13998
[c76]Yulan Hu, Ge Chen, Sheng Ouyang, Zhirui Yang, Junchen Wan, Fuzheng Zhang, Zhongyuan Wang, Zhao Cao, Shangquan Wu, Yong Liu:
Advancing Latent Representation Ranking for Masked Graph Autoencoder. DASFAA (6) 2024: 385-394
[c75]Yulan Hu, Sheng Ouyang, Zhirui Yang, Yi Zhao, Junchen Wan, Fuzheng Zhang, Zhongyuan Wang, Yong Liu:
GFMAE: Self-Supervised GNN-Free Masked Autoencoders. ICASSP 2024: 7500-7504
[c74]Shaojie Li, Yong Liu:
Concentration Inequalities for General Functions of Heavy-Tailed Random Variables. ICML 2024
[c73]Shaojie Li, Bowei Zhu, Yong Liu:
Algorithmic Stability Unleashed: Generalization Bounds with Unbounded Losses. ICML 2024
[c72]Jingyu Liu, Huayi Tang, Yong Liu:
Perfect Alignment May be Poisonous to Graph Contrastive Learning. ICML 2024
[c71]Bowei Zhu, Shaojie Li, Yong Liu:
Towards Sharper Risk Bounds for Minimax Problems. IJCAI 2024: 5698-5706
[c70]Sunhao Dai
, Yuqi Zhou
, Liang Pang
, Weihao Liu
, Xiaolin Hu
, Yong Liu
, Xiao Zhang
, Gang Wang
, Jun Xu
:
Neural Retrievers are Biased Towards LLM-Generated Content. KDD 2024: 526-537
[c69]Chen Qian
, Huayi Tang
, Hong Liang
, Yong Liu
:
Reimagining Graph Classification from a Prototype View with Optimal Transport: Algorithm and Theorem. KDD 2024: 2444-2454
[c68]Ruifeng Ren, Yong Liu:
Towards Understanding How Transformers Learn In-context Through a Representation Learning Lens. NeurIPS 2024
[c67]Xinhao Yao, Xiaolin Hu, Shenzhi Yang, Yong Liu:
Enhancing In-Context Learning Performance with just SVD-Based Weight Pruning: A Theoretical Perspective. NeurIPS 2024
[c66]Ge Chen
, Yulan Hu
, Sheng Ouyang
, Zhirui Yang
, Yong Liu
, Cuicui Luo
:
IdmGAE: Importance-Inspired Dynamic Masking for Graph Autoencoders. SIGIR 2024: 2457-2461
[i65]Jian Li, Yong Liu, Wei Wang, Haoran Wu, Weiping Wang:
FedNS: A Fast Sketching Newton-Type Algorithm for Federated Learning. CoRR abs/2401.02734 (2024)
[i64]Xunyu Zhu, Jian Li, Yong Liu, Can Ma, Weiping Wang:
Improving Small Language Models' Mathematical Reasoning via Equation-of-Thought Distillation. CoRR abs/2401.11864 (2024)
[i63]Yulan Hu, Sheng Ouyang, Zhirui Yang, Ge Chen, Junchen Wan, Xiao Wang
, Yong Liu:
Exploring Task Unification in Graph Representation Learning via Generative Approach. CoRR abs/2403.14340 (2024)
[i62]Xinhao Yao, Xiaolin Hu
, Shenzhi Yang, Yong Liu:
Enhancing In-Context Learning Performance with just SVD-Based Weight Pruning: A Theoretical Perspective. CoRR abs/2406.03768 (2024)
[i61]Yulan Hu, Qingyang Li, Sheng Ouyang, Ge Chen, Kaihui Chen, Lijun Mei, Xucheng Ye, Fuzheng Zhang, Yong Liu:
Towards Comprehensive Preference Data Collection for Reward Modeling. CoRR abs/2406.16486 (2024)
[i60]Ge Chen, Yulan Hu, Sheng Ouyang, Yong Liu, Cuicui Luo:
Preserving Node Distinctness in Graph Autoencoders via Similarity Distillation. CoRR abs/2406.17517 (2024)
[i59]Kaihui Chen, Hao Yi, Qingyang Li, Tianyu Qi, Yulan Hu, Fuzheng Zhang, Yong Liu:
TSO: Self-Training with Scaled Preference Optimization. CoRR abs/2409.02118 (2024)
[i58]Sheng Ouyang, Yulan Hu, Ge Chen, Yong Liu:
GUNDAM: Aligning Large Language Models with Graph Understanding. CoRR abs/2409.20053 (2024)
[i57]Zeyu Gan, Yong Liu:
Towards a Theoretical Understanding of Synthetic Data in LLM Post-Training: A Reverse-Bottleneck Perspective. CoRR abs/2410.01720 (2024)
[i56]Xinhao Yao, Hongjin Qian, Xiaolin Hu, Gengze Xu, Yong Liu:
Theoretical Insights into Fine-Tuning Attention Mechanism: Generalization and Optimization. CoRR abs/2410.02247 (2024)
[i55]Jingyu Liu, Jiaen Lin, Yong Liu:
How Much Can RAG Help the Reasoning of LLM? CoRR abs/2410.02338 (2024)
[i54]Ruifeng Ren, Zhicong Li, Yong Liu:
Can Mamba Always Enjoy the "Free Lunch"? CoRR abs/2410.03810 (2024)
[i53]Wei Yao, Zeliang Zhang, Huayi Tang, Yong Liu:
Understanding Model Ensemble in Transferable Adversarial Attack. CoRR abs/2410.06851 (2024)
[i52]Bowei Zhu, Shaojie Li, Yong Liu:
Towards Sharper Risk Bounds for Minimax Problems. CoRR abs/2410.08497 (2024)
[i51]Jie Zhang, Dongrui Liu, Chen Qian, Linfeng Zhang
, Yong Liu, Yu Qiao, Jing Shao:
REEF: Representation Encoding Fingerprints for Large Language Models. CoRR abs/2410.14273 (2024)
[i50]Chen Qian, Dongrui Liu, Jie Zhang, Yong Liu, Jing Shao:
DEAN: Deactivating the Coupled Neurons to Mitigate Fairness-Privacy Conflicts in Large Language Models. CoRR abs/2410.16672 (2024)
[i49]Zhicong Li, Jiahao Wang, Zhishu Jiang, Hangyu Mao, Zhongxia Chen, Jiazhen Du, Yuanxing Zhang, Fuzheng Zhang, Di Zhang, Yong Liu:
DMQR-RAG: Diverse Multi-Query Rewriting for RAG. CoRR abs/2411.13154 (2024)
[i48]Hao Yi, Qingyang Li, Yulan Hu, Fuzheng Zhang, Di Zhang, Yong Liu:
Video-Text Dataset Construction from Multi-AI Feedback: Promoting Weak-to-Strong Preference Learning for Video Large Language Models. CoRR abs/2411.16201 (2024)
[i47]Yunkai Dang, Kaichen Huang, Jiahao Huo, Yibo Yan, Sirui Huang, Dongrui Liu, Mengxi Gao, Jie Zhang, Chen Qian, Kun Wang, Yong Liu, Jing Shao, Hui Xiong, Xuming Hu:
Explainable and Interpretable Multimodal Large Language Models: A Comprehensive Survey. CoRR abs/2412.02104 (2024)
[i46]Ruyue Liu, Rong Yin, Xiangzhen Bo, Xiaoshuai Hao, Xingrui Zhou, Yong Liu, Can Ma, Weiping Wang:
Communication-Efficient Personalized Federal Graph Learning via Low-Rank Decomposition. CoRR abs/2412.13442 (2024)- 2023
[j19]Yuzhe Li
, Yong Liu
, Bo Li
, Weiping Wang
, Nan Liu:
Towards practical differential privacy in data analysis: Understanding the effect of epsilon on utility in private ERM. Comput. Secur. 128: 103147 (2023)
[j18]Jian Li, Yong Liu, Weiping Wang:
Optimal Convergence Rates for Distributed Nystroem Approximation. J. Mach. Learn. Res. 24: 141:1-141:39 (2023)
[j17]Xunyu Zhu
, Jian Li
, Yong Liu, Weiping Wang
:
Improving Differentiable Architecture Search via self-distillation. Neural Networks 167: 656-667 (2023)
[j16]Shaojie Li
, Yong Liu
:
Learning Rates for Nonconvex Pairwise Learning. IEEE Trans. Pattern Anal. Mach. Intell. 45(8): 9996-10011 (2023)
[j15]Jian Li
, Yong Liu, Weiping Wang
:
Semi-supervised vector-valued learning: Improved bounds and algorithms. Pattern Recognit. 138: 109356 (2023)
[j14]Shengdong Zhang
, Wenqi Ren
, Xin Tan
, Zhi-Jie Wang
, Yong Liu
, Jingang Zhang
, Xiaoqin Zhang
, Xiaochun Cao
:
Semantic-Aware Dehazing Network With Adaptive Feature Fusion. IEEE Trans. Cybern. 53(1): 454-467 (2023)
[j13]Rong Yin
, Yong Liu
, Weiping Wang
, Dan Meng:
Scalable Kernel $k$-Means With Randomized Sketching: From Theory to Algorithm. IEEE Trans. Knowl. Data Eng. 35(9): 9210-9224 (2023)
[j12]Wen Yu, Baiying Lei
, Shuqiang Wang
, Yong Liu
, Zhiguang Feng, Yong Hu
, Yanyan Shen
, Michael K. Ng
:
Morphological Feature Visualization of Alzheimer's Disease via Multidirectional Perception GAN. IEEE Trans. Neural Networks Learn. Syst. 34(8): 4401-4415 (2023)
[j11]Senrong You, Baiying Lei
, Shuqiang Wang
, Charles K. Chui, Albert C. Cheung, Yong Liu
, Min Gan
, Guo-Cheng Wu
, Yanyan Shen
:
Fine Perceptive GANs for Brain MR Image Super-Resolution in Wavelet Domain. IEEE Trans. Neural Networks Learn. Syst. 34(11): 8802-8814 (2023)
[c65]Shaojie Li, Sheng Ouyang, Yong Liu:
Understanding the Generalization Performance of Spectral Clustering Algorithms. AAAI 2023: 8614-8621
[c64]Pengwei Tang, Huayi Tang, Wenhan Wang, Hanjing Su, Yong Liu:
Decouple then Combine: A Simple and Effective Framework for Fraud Transaction Detection. ACML 2023: 1353-1368
[c63]Jiechao Yang, Yong Liu, Hongteng Xu:
HOTNAS: Hierarchical Optimal Transport for Neural Architecture Search. CVPR 2023: 11990-12000
[c62]Pengwei Tang, Wei Yao, Zhicong Li, Yong Liu:
Fair Scratch Tickets: Finding Fair Sparse Networks without Weight Training. CVPR 2023: 24406-24416
[c61]Shaojie Li, Yong Liu:
High Probability Analysis for Non-Convex Stochastic Optimization with Clipping. ECAI 2023: 1406-1413
[c60]Yilin Kang
, Jian Li
, Yong Liu, Weiping Wang:
Data Heterogeneity Differential Privacy: From Theory to Algorithm. ICCS (1) 2023: 119-133
[c59]Xiaolin Hu, Shaojie Li, Yong Liu:
Generalization Bounds for Federated Learning: Fast Rates, Unparticipating Clients and Unbounded Losses. ICLR 2023
[c58]Shaojie Li, Yong Liu:
Distribution-dependent McDiarmid-type Inequalities for Functions of Unbounded Interaction. ICML 2023: 19789-19810
[c57]Jian Li, Yong Liu, Weiping Wang:
Optimal Convergence Rates for Agnostic Nyström Kernel Learning. ICML 2023: 19811-19836
[c56]Weixuan Liang, Xinwang Liu, Yong Liu, Chuan Ma, Yunping Zhao, Zhe Liu, En Zhu:
Consistency of Multiple Kernel Clustering. ICML 2023: 20650-20676
[c55]Huayi Tang, Yong Liu:
Towards Understanding Generalization of Graph Neural Networks. ICML 2023: 33674-33719
[c54]Jian Li
, Yong Liu:
Towards Sharp Analysis for Distributed Learning with Random Features. IJCAI 2023: 3920-3928
[c53]Pengwei Tang, Huayi Tang, Wei Wang, Yong Liu:
Safe Contrastive Clustering. MMM (1) 2023: 294-305
[i45]Xunyu Zhu
, Jian Li, Yong Liu, Weiping Wang:
Improving Differentiable Architecture Search via Self-Distillation. CoRR abs/2302.05629 (2023)
[i44]Xunyu Zhu, Jian Li, Yong Liu, Weiping Wang:
Operation-level Progressive Differentiable Architecture Search. CoRR abs/2302.05632 (2023)
[i43]Xunyu Zhu, Jian Li, Yong Liu, Weiping Wang:
Robust Neural Architecture Search. CoRR abs/2304.02845 (2023)
[i42]Huayi Tang, Yong Liu:
Towards Understanding the Generalization of Graph Neural Networks. CoRR abs/2305.08048 (2023)
[i41]Chen Qian, Huayi Tang, Zhirui Yang, Hong Liang, Yong Liu:
Can Large Language Models Empower Molecular Property Prediction? CoRR abs/2307.07443 (2023)
[i40]Shaojie Li, Yong Liu:
High Probability Analysis for Non-Convex Stochastic Optimization with Clipping. CoRR abs/2307.13680 (2023)
[i39]Xunyu Zhu
, Jian Li, Yong Liu, Can Ma, Weiping Wang:
A Survey on Model Compression for Large Language Models. CoRR abs/2308.07633 (2023)
[i38]Jingyu Liu, Huayi Tang, Yong Liu:
Perfect Alignment May be Poisonous to Graph Contrastive Learning. CoRR abs/2310.03977 (2023)
[i37]Yulan Hu, Zhirui Yang, Sheng Ouyang, Junchen Wan, Fuzheng Zhang, Zhongyuan Wang, Yong Liu:
HGCVAE: Integrating Generative and Contrastive Learning for Heterogeneous Graph Learning. CoRR abs/2310.11102 (2023)
[i36]Wei Yao, Zhanke Zhou, Zhicong Li, Bo Han, Yong Liu:
Understanding Fairness Surrogate Functions in Algorithmic Fairness. CoRR abs/2310.11211 (2023)
[i35]Ruifeng Ren, Yong Liu:
In-context Learning with Transformer Is Really Equivalent to a Contrastive Learning Pattern. CoRR abs/2310.13220 (2023)
[i34]Yulan Hu, Sheng Ouyang, Jingyu Liu, Ge Chen, Zhirui Yang, Junchen Wan, Fuzheng Zhang, Zhongyuan Wang, Yong Liu:
Do We Really Need Contrastive Learning for Graph Representation? CoRR abs/2310.14525 (2023)
[i33]Sunhao Dai, Yuqi Zhou, Liang Pang, Weihao Liu, Xiaolin Hu, Yong Liu, Xiao Zhang, Jun Xu:
LLMs may Dominate Information Access: Neural Retrievers are Biased Towards LLM-Generated Texts. CoRR abs/2310.20501 (2023)
[i32]Yulan Hu, Sheng Ouyang, Zhirui Yang, Yong Liu:
VIGraph: Self-supervised Learning for Class-Imbalanced Node Classification. CoRR abs/2311.01191 (2023)
[i31]Huayi Tang, Yong Liu:
Information-Theoretic Generalization Bounds for Transductive Learning and its Applications. CoRR abs/2311.04561 (2023)
[i30]Ruyue Liu, Rong Yin, Yong Liu, Weiping Wang:
ASWT-SGNN: Adaptive Spectral Wavelet Transform-based Self-Supervised Graph Neural Network. CoRR abs/2312.05736 (2023)- 2022
[j10]Jian Li
, Yong Liu
, Weiping Wang
:
Convolutional spectral kernel learning with generalization guarantees. Artif. Intell. 313: 103803 (2022)
[j9]Guangjun Wu
, Xiaochun Yun, Yong Wang
, Shupeng Wang, Binbin Li, Yong Liu
:
A Sketching Approach for Obtaining Real-Time Statistics Over Data Streams in Cloud. IEEE Trans. Cloud Comput. 10(2): 1462-1475 (2022)
[c52]Rong Yin, Yong Liu, Dan Meng:
Distributed Randomized Sketching Kernel Learning. AAAI 2022: 8883-8891
[c51]Yilin Kang
, Yong Liu, Jian Li
, Weiping Wang
:
Sharper Utility Bounds for Differentially Private Models: Smooth and Non-smooth. CIKM 2022: 951-961
[c50]Huayi Tang, Yong Liu:
Deep Safe Multi-view Clustering: Reducing the Risk of Clustering Performance Degradation Caused by View Increase. CVPR 2022: 202-211
[c49]Shaojie Li, Yong Liu:
High Probability Generalization Bounds with Fast Rates for Minimax Problems. ICLR 2022
[c48]Shaojie Li, Yong Liu:
High Probability Guarantees for Nonconvex Stochastic Gradient Descent with Heavy Tails. ICML 2022: 12931-12963
[c47]Huayi Tang, Yong Liu:
Deep Safe Incomplete Multi-view Clustering: Theorem and Algorithm. ICML 2022: 21090-21110
[c46]Jian Li
, Yong Liu, Yingying Zhang:
Ridgeless Regression with Random Features. IJCAI 2022: 3208-3214
[c45]Rong Yin, Yong Liu, Weiping Wang, Dan Meng:
Randomized Sketches for Clustering: Fast and Optimal Kernel $k$-Means. NeurIPS 2022
[c44]Jiechao Guan, Yong Liu, Zhiwu Lu:
Fine-Grained Analysis of Stability and Generalization for Modern Meta Learning Algorithms. NeurIPS 2022
[c43]Weixuan Liang, Xinwang Liu, Yong Liu, Sihang Zhou, Jun-Jie Huang, Siwei Wang, Jiyuan Liu, Yi Zhang, En Zhu:
Stability and Generalization of Kernel Clustering: from Single Kernel to Multiple Kernel. NeurIPS 2022
[c42]Jian Li
, Bojian Wei
, Yong Liu
, Weiping Wang
:
Non-IID Distributed Learning with Optimal Mixture Weights. ECML/PKDD (4) 2022: 539-554
[i29]Yilin Kang, Yong Liu, Jian Li, Weiping Wang:
Stability and Generalization of Differentially Private Minimax Problems. CoRR abs/2204.04858 (2022)
[i28]Yilin Kang, Yong Liu, Jian Li, Weiping Wang:
Sharper Utility Bounds for Differentially Private Models. CoRR abs/2204.10536 (2022)
[i27]Shaojie Li, Sheng Ouyang, Yong Liu:
Understanding the Generalization Performance of Spectral Clustering Algorithms. CoRR abs/2205.00281 (2022)
[i26]Jian Li, Yong Liu, Yingying Zhang:
Ridgeless Regression with Random Features. CoRR abs/2205.00477 (2022)
[i25]Yuzhe Li, Yong Liu, Bo Li
, Weiping Wang, Nan Liu:
Towards Practical Differential Privacy in Data Analysis: Understanding the Effect of Epsilon on Utility in Private ERM. CoRR abs/2206.03488 (2022)- 2021
[j8]Yilin Kang
, Yong Liu, Ben Niu, Weiping Wang
:
Weighted distributed differential privacy ERM: Convex and non-convex. Comput. Secur. 106: 102275 (2021)
[j7]Yong Liu
, Shizhong Liao
, Hua Zhang
, Wenqi Ren, Weiping Wang
:
Kernel Stability for Model Selection in Kernel-Based Algorithms. IEEE Trans. Cybern. 51(12): 5647-5658 (2021)
[c41]Xunyu Zhu
, Jian Li
, Yong Liu, Jun Liao, Weiping Wang
:
Operation-level Progressive Differentiable Architecture Search. ICDM 2021: 1559-1564
[c40]Yong Liu, Jiankun Liu, Shuqiang Wang:
Effective Distributed Learning with Random Features: Improved Bounds and Algorithms. ICLR 2021
[c39]Shaojie Li, Yong Liu:
Sharper Generalization Bounds for Clustering. ICML 2021: 6392-6402
[c38]Rong Yin, Yong Liu, Weiping Wang, Dan Meng:
Distributed Nyström Kernel Learning with Communications. ICML 2021: 12019-12028
[c37]Nannan Tian, Yong Liu, Weiping Wang
, Dan Meng:
Automatic CNN Compression Based on Hyper-parameter Learning. IJCNN 2021: 1-8
[c36]Nannan Tian, Yong Liu, Weiping Wang
, Dan Meng:
Fast CNN Inference by Adaptive Sparse Matrix Decomposition. IJCNN 2021: 1-8
[c35]Nannan Tian, Yong Liu, Weiping Wang
, Dan Meng:
Energy-saving CNN with Clustering Channel Pruning. IJCNN 2021: 1-8
[c34]Bowei Zhu, Yong Liu:
General Approximate Cross Validation for Model Selection: Supervised, Semi-supervised and Pairwise Learning. ACM Multimedia 2021: 5281-5289
[c33]Yong Liu:
Refined Learning Bounds for Kernel and Approximate $k$-Means. NeurIPS 2021: 6142-6154
[c32]Shaogao Lv, Junhui Wang, Jiankun Liu, Yong Liu:
Improved Learning Rates of a Functional Lasso-type SVM with Sparse Multi-Kernel Representation. NeurIPS 2021: 21467-21479
[c31]Shaojie Li, Yong Liu:
Towards Sharper Generalization Bounds for Structured Prediction. NeurIPS 2021: 26844-26857
[c30]Bowen Hu, Baiying Lei
, Yanyan Shen, Yong Liu, Shuqiang Wang
:
A Point Cloud Generative Model via Tree-Structured Graph Convolutions for 3D Brain Shape Reconstruction. PRCV (2) 2021: 263-274
[c29]Junren Pan, Baiying Lei
, Yanyan Shen, Yong Liu, Zhiguang Feng, Shuqiang Wang
:
Characterization Multimodal Connectivity of Brain Network by Hypergraph GAN for Alzheimer's Disease Analysis. PRCV (3) 2021: 467-478
[c28]Qiankun Zuo
, Baiying Lei
, Yanyan Shen, Yong Liu, Zhiguang Feng, Shuqiang Wang
:
Multimodal Representations Learning and Adversarial Hypergraph Fusion for Early Alzheimer's Disease Prediction. PRCV (3) 2021: 479-490
[c27]Bojian Wei
, Jian Li
, Yong Liu
, Weiping Wang
:
Federated Learning for Non-IID Data: From Theory to Algorithm. PRICAI (1) 2021: 33-48
[c26]Yuzhe Li
, Yong Liu, Bo Li
, Weiping Wang
, Nan Liu:
Just Keep Your Concerns Private: Guaranteeing Heterogeneous Privacy and Achieving High Availability for ERM Algorithms. TrustCom 2021: 371-378
[i24]Yilin Kang, Yong Liu, Jian Li, Weiping Wang:
Differential Privacy for Pairwise Learning: Non-convex Analysis. CoRR abs/2105.03033 (2021)
[i23]Shaojie Li, Yong Liu:
Improved Learning Rates for Stochastic Optimization: Two Theoretical Viewpoints. CoRR abs/2107.08686 (2021)
[i22]Bowen Hu, Baiying Lei, Yanyan Shen, Yong Liu, Shuqiang Wang:
A Point Cloud Generative Model via Tree-Structured Graph Convolutions for 3D Brain Shape Reconstruction. CoRR abs/2107.09923 (2021)
[i21]Qiankun Zuo, Baiying Lei, Yanyan Shen, Yong Liu, Zhiguang Feng, Shuqiang Wang:
Multimodal Representations Learning and Adversarial Hypergraph Fusion for Early Alzheimer's Disease Prediction. CoRR abs/2107.09928 (2021)
[i20]Junren Pan, Baiying Lei, Yanyan Shen, Yong Liu, Zhiguang Feng, Shuqiang Wang:
Characterization Multimodal Connectivity of Brain Network by Hypergraph GAN for Alzheimer's Disease Analysis. CoRR abs/2107.09953 (2021)
[i19]Bowen Hu, Baiying Lei, Yong Liu, Min Gan, Bingchuan Wang, Shuqiang Wang:
3D Brain Reconstruction by Hierarchical Shape-Perception Network from a Single Incomplete Image. CoRR abs/2107.11010 (2021)
[i18]Junren Pan, Baiying Lei, Shuqiang Wang, Bingchuan Wang, Yong Liu, Yanyan Shen:
DecGAN: Decoupling Generative Adversarial Network detecting abnormal neural circuits for Alzheimer's disease. CoRR abs/2110.05712 (2021)
[i17]Qiankun Zuo, Baiying Lei, Shuqiang Wang, Yong Liu, Bingchuan Wang, Yanyan Shen:
A Prior Guided Adversarial Representation Learning and Hypergraph Perceptual Network for Predicting Abnormal Connections of Alzheimer's Disease. CoRR abs/2110.09302 (2021)
[i16]Shaojie Li, Yong Liu:
Learning Rates for Nonconvex Pairwise Learning. CoRR abs/2111.05232 (2021)
[i15]Yulan Hu, Yong Liu:
Green CWS: Extreme Distillation and Efficient Decode Method Towards Industrial Application. CoRR abs/2111.09078 (2021)
[i14]Wen Yu, Baiying Lei, Yanyan Shen, Shuqiang Wang, Yong Liu, Zhiguang Feng, Yong Hu, Michael K. Ng:
Morphological feature visualization of Alzheimer's disease via Multidirectional Perception GAN. CoRR abs/2111.12886 (2021)- 2020
[j6]Yong Liu
, Shizhong Liao
, Shali Jiang, Lizhong Ding
, Hailun Lin, Weiping Wang
:
Fast Cross-Validation for Kernel-Based Algorithms. IEEE Trans. Pattern Anal. Mach. Intell. 42(5): 1083-1096 (2020)
[j5]Rong Yin
, Yong Liu
, Weiping Wang
, Dan Meng:
Sketch Kernel Ridge Regression Using Circulant Matrix: Algorithm and Theory. IEEE Trans. Neural Networks Learn. Syst. 31(9): 3512-3524 (2020)
[j4]Lizhong Ding
, Shizhong Liao
, Yong Liu
, Li Liu, Fan Zhu, Yazhou Yao
, Ling Shao
, Xin Gao
:
Approximate Kernel Selection via Matrix Approximation. IEEE Trans. Neural Networks Learn. Syst. 31(11): 4881-4891 (2020)
[c25]Jian Li, Yong Liu, Weiping Wang
:
Automated Spectral Kernel Learning. AAAI 2020: 4618-4625
[c24]Rong Yin, Yong Liu, Lijing Lu, Weiping Wang
, Dan Meng:
Divide-and-Conquer Learning with Nyström: Optimal Rate and Algorithm. AAAI 2020: 6696-6703
[c23]Lijing Lu
, Rong Yin
, Yong Liu, Weiping Wang:
Hashing Based Prediction for Large-Scale Kernel Machine. ICCS (2) 2020: 496-509
[c22]Rong Yin, Yong Liu, Weiping Wang
, Dan Meng:
Extremely Sparse Johnson-Lindenstrauss Transform: From Theory to Algorithm. ICDM 2020: 1376-1381
[i13]Yilin Kang, Yong Liu, Ben Niu, Xinyi Tong, Likun Zhang, Weiping Wang:
Input Perturbation: A New Paradigm between Central and Local Differential Privacy. CoRR abs/2002.08570 (2020)
[i12]Yilin Kang, Yong Liu, Lizhong Ding, Xinwang Liu, Xinyi Tong, Weiping Wang:
Differentially Private ERM Based on Data Perturbation. CoRR abs/2002.08578 (2020)
[i11]Jian Li, Yong Liu, Weiping Wang:
Convolutional Spectral Kernel Learning. CoRR abs/2002.12744 (2020)
[i10]Yong Liu, Lizhong Ding, Weiping Wang:
Theoretical Analysis of Divide-and-Conquer ERM: Beyond Square Loss and RKHS. CoRR abs/2003.03882 (2020)
[i9]Yong Liu, Lizhong Ding, Weiping Wang:
Nearly Optimal Clustering Risk Bounds for Kernel K-Means. CoRR abs/2003.03888 (2020)
[i8]Jian Li, Yong Liu, Jiankun Liu, Weiping Wang:
Neural Architecture Optimization with Graph VAE. CoRR abs/2006.10310 (2020)
[i7]Senrong You, Yong Liu, Baiying Lei, Shuqiang Wang:
Fine Perceptive GANs for Brain MR Image Super-Resolution in Wavelet Domain. CoRR abs/2011.04145 (2020)
2010 – 2019
- 2019
[j3]Hua Zhang
, Peng She, Yong Liu
, Jianhou Gan, Xiaochun Cao
, Hassan Foroosh:
Learning Structural Representations via Dynamic Object Landmarks Discovery for Sketch Recognition and Retrieval. IEEE Trans. Image Process. 28(9): 4486-4499 (2019)
[c21]Lizhong Ding, Zhi Liu, Yu Li, Shizhong Liao, Yong Liu, Peng Yang, Ge Yu, Ling Shao, Xin Gao:
Linear Kernel Tests via Empirical Likelihood for High-Dimensional Data. AAAI 2019: 3454-3461
[c20]Lizhong Ding, Yong Liu, Shizhong Liao, Yu Li, Peng Yang, Yijie Pan, Chao Huang, Ling Shao, Xin Gao:
Approximate Kernel Selection with Strong Approximate Consistency. AAAI 2019: 3462-3469
[c19]Guangjun Wu, Xiaochun Yun, Shupeng Wang, Ge Fu, Chao Li, Yong Liu, Binbin Li, Yong Wang, Zhihui Zhao:
Accelerating Real-Time Tracking Applications over Big Data Stream with Constrained Space. DASFAA (1) 2019: 3-18
[c18]Hailun Lin, Yong Liu, Peng Zhang, Jianwu Wang:
Representation Learning of Taxonomies for Taxonomy Matching. ICCS (1) 2019: 383-397
[c17]Jian Li, Yong Liu, Rong Yin, Weiping Wang
:
Multi-Class Learning using Unlabeled Samples: Theory and Algorithm. IJCAI 2019: 2880-2886
[c16]Jian Li, Yong Liu, Rong Yin, Weiping Wang
:
Approximate Manifold Regularization: Scalable Algorithm and Generalization Analysis. IJCAI 2019: 2887-2893
[c15]Lizhong Ding, Mengyang Yu, Li Liu, Fan Zhu, Yong Liu, Yu Li, Ling Shao:
Two Generator Game: Learning to Sample via Linear Goodness-of-Fit Test. NeurIPS 2019: 11257-11268
[i6]Yong Liu, Jian Li, Guangjun Wu, Lizhong Ding, Weiping Wang:
Efficient Cross-Validation for Semi-Supervised Learning. CoRR abs/1902.04768 (2019)
[i5]Jian Li, Yong Liu, Weiping Wang:
Distributed Learning with Random Features. CoRR abs/1906.03155 (2019)
[i4]Jian Li, Yong Liu, Weiping Wang:
Learning Vector-valued Functions with Local Rademacher Complexity. CoRR abs/1909.04883 (2019)
[i3]Jian Li, Yong Liu, Weiping Wang:
Automated Spectral Kernel Learning. CoRR abs/1909.04894 (2019)
[i2]Yilin Kang, Yong Liu, Weiping Wang:
Weighted Distributed Differential Privacy ERM: Convex and Non-convex. CoRR abs/1910.10308 (2019)- 2018
[c14]Lizhong Ding, Shizhong Liao, Yong Liu, Peng Yang, Xin Gao:
Randomized Kernel Selection With Spectra of Multilevel Circulant Matrices. AAAI 2018: 2910-2917
[c13]Yong Liu, Hailun Lin, Lizhong Ding, Weiping Wang
, Shizhong Liao:
Fast Cross-Validation. IJCAI 2018: 2497-2503
[c12]Jian Li, Yong Liu, Rong Yin, Hua Zhang, Lizhong Ding, Weiping Wang:
Multi-Class Learning: From Theory to Algorithm. NeurIPS 2018: 1593-1602
[i1]Yong Liu, Jian Li, Weiping Wang:
Max-Diversity Distributed Learning: Theory and Algorithms. CoRR abs/1812.07738 (2018)- 2017
[j2]Yong Liu, Shizhong Liao:
Granularity selection for cross-validation of SVM. Inf. Sci. 378: 475-483 (2017)
[c11]Yong Liu, Shizhong Liao, Hailun Lin, Yinliang Yue, Weiping Wang
:
Generalization Analysis for Ranking Using Integral Operator. AAAI 2017: 2273-2279
[c10]Yong Liu, Shizhong Liao, Hailun Lin, Yinliang Yue, Weiping Wang
:
Infinite Kernel Learning: Generalization Bounds and Algorithms. AAAI 2017: 2280-2286
[c9]Hailun Lin, Yong Liu, Weiping Wang
, Yinliang Yue, Zheng Lin:
Learning Entity and Relation Embeddings for Knowledge Resolution. ICCS 2017: 345-354
[c8]Jian Li, Yong Liu, Hailun Lin, Yinliang Yue, Weiping Wang
:
Efficient Kernel Selection via Spectral Analysis. IJCAI 2017: 2124-2130- 2015
[c7]Yong Liu, Shizhong Liao:
Eigenvalues Ratio for Kernel Selection of Kernel Methods. AAAI 2015: 2814-2820- 2014
[j1]Yong Liu, Shizhong Liao:
Kernel selection with spectral perturbation stability of kernel matrix. Sci. China Inf. Sci. 57(11): 1-10 (2014)
[c6]Yong Liu, Shali Jiang, Shizhong Liao:
Efficient Approximation of Cross-Validation for Kernel Methods using Bouligand Influence Function. ICML 2014: 324-332
[c5]Yong Liu, Shizhong Liao:
Preventing Over-Fitting of Cross-Validation with Kernel Stability. ECML/PKDD (2) 2014: 290-305- 2013
[c4]Yong Liu, Shali Jiang, Shizhong Liao:
Eigenvalues perturbation of integral operator for kernel selection. CIKM 2013: 2189-2198- 2012
[c3]Yong Liu, Shizhong Liao:
An Explicit Description of the Extended Gaussian Kernel. PAKDD Workshops 2012: 88-99- 2011
[c2]Yong Liu, Shizhong Liao, Yuexian Hou:
Learning kernels with upper bounds of leave-one-out error. CIKM 2011: 2205-2208
[c1]Yong Liu, Shizhong Liao:
An Error Bound for Eigenvalues of Graph Laplacian with Bounded Kernel Function. CIS 2011: 436-440
Coauthor Index
aka: Baiying Lei

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