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Haibo Yang 0001
Person information
- affiliation: Rochester Institute of Technology, NY, USA
- affiliation (former): Ohio State University, Columbus, OH, USA
- affiliation (former): Iowa State University, Ames, IA, USA
Other persons with the same name
- Haibo Yang — disambiguation page
- Haibo Yang 0002
— Fudan University, Shanghai, China - Haibo Yang 0003
— Shenyang University of Technology, Shenyang, Liaoning, China (and 1 more) - Haibo Yang 0004 — Hubei, University, Wuhan, China
- Haibo Yang 0005
— Zhengzhou University, Zhengzhou, Henan, China
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2020 – today
- 2026
[j1]Zhiyuan Chen
, Vanessa Nava-Camal, Tiash Roy
, Zhe Li
, Yiming Tang
, Xueling Zhang, Haibo Yang
:
Exploring Large Language Models' Potential for Privacy Leakage Detection in Android App Logs: An Empirical Study. IEEE Softw. 43(1): 57-63 (2026)
[i24]Fairoz Nower Khan, Nabuat Zaman Nahim, Ruiquan Huang, Haibo Yang, Peizhong Ju:
Flow Matching for Offline Reinforcement Learning with Discrete Actions. CoRR abs/2602.06138 (2026)- 2025
[c24]Mingjing Xu
, Peizhong Ju, Jia Liu, Haibo Yang:
PSMGD: Periodic Stochastic Multi-Gradient Descent for Fast Multi-Objective Optimization. AAAI 2025: 21770-21778
[c23]Zhe Li, Bicheng Ying, Dandan Liang, Zidong Liu, Rui Li, Haibo Yang:
Achieving Extremely Low Communication Overhead in Federated Learning via Zeroth-Order SignSGD. IEEECONF 2025: 619-623
[c22]Hairi, Yang Jiao, Tianchen Zhou, Haibo Yang, Chaosheng Dong, Fan Yang, Michinari Momma, Yan Gao, Jia Liu:
Enabling Pareto-Stationarity Exploration in Multi-Objective Reinforcement Learning: A Multi-Objective Weighted-Chebyshev Actor-Critic Approach. CDC 2025: 5147-5152
[c21]Zhe Li, Bicheng Ying, Zidong Liu, Chaosheng Dong, Haibo Yang:
Achieving Dimension-Free Communication in Federated Learning via Zeroth-Order Optimization. ICLR 2025
[c20]Zhe Li, Seyedsina Nabavirazavi, Bicheng Ying, S. Sitharama Iyengar
, Haibo Yang:
FAST: A Lightweight Mechanism Unleashing Arbitrary Client Participation in Federated Learning. IJCAI 2025: 5644-5652
[c19]Minghong Fang, Seyedsina Nabavirazavi, Zhuqing Liu, Wei Sun, Sundaraja Sitharama Iyengar, Haibo Yang:
Do We Really Need to Design New Byzantine-robust Aggregation Rules? NDSS 2025
[c18]Zhuqing Liu, Chaosheng Dong, Michinari Momma, Simone Shao, Shaoyuan Xu, Yan Gao, Haibo Yang, Jia Liu:
STIMULUS: Achieving Fast Convergence and Low Sample Complexity in Stochastic Multi-Objective Learning. UAI 2025: 2711-2747
[i23]Minghong Fang, Seyedsina Nabavirazavi, Zhuqing Liu, Wei Sun, Sundaraja Sitharama Iyengar, Haibo Yang:
Do We Really Need to Design New Byzantine-robust Aggregation Rules? CoRR abs/2501.17381 (2025)
[i22]Bicheng Ying, Zhe Li, Haibo Yang:
From Interpretation to Correction: A Decentralized Optimization Framework for Exact Convergence in Federated Learning. CoRR abs/2503.20117 (2025)
[i21]Zhe Li, Bicheng Ying, Zidong Liu, Chaosheng Dong, Haibo Yang:
Reconciling Hessian-Informed Acceleration and Scalar-Only Communication for Efficient Federated Zeroth-Order Fine-Tuning. CoRR abs/2506.02370 (2025)
[i20]Zhuqing Liu, Chaosheng Dong, Michinari Momma, Simone Shao, Shaoyuan Xu, Yan Gao, Haibo Yang, Jia Liu:
STIMULUS: Achieving Fast Convergence and Low Sample Complexity in Stochastic Multi-Objective Learning. CoRR abs/2506.19883 (2025)
[i19]Hairi, Jiao Yang, Tianchen Zhou, Haibo Yang, Chaosheng Dong, Fan Yang, Michinari Momma, Yan Gao, Jia Liu:
Enabling Pareto-Stationarity Exploration in Multi-Objective Reinforcement Learning: A Multi-Objective Weighted-Chebyshev Actor-Critic Approach. CoRR abs/2507.21397 (2025)
[i18]Dandan Liang, Jianing Zhang, Evan Chen, Zhe Li, Rui Li, Haibo Yang:
Towards Straggler-Resilient Split Federated Learning: An Unbalanced Update Approach. CoRR abs/2510.21155 (2025)- 2024
[c17]Haibo Yang, Peiwen Qiu, Prashant Khanduri, Minghong Fang, Jia Liu:
Understanding Server-Assisted Federated Learning in the Presence of Incomplete Client Participation. ICML 2024: 56298-56318
[c16]Tianchen Zhou, Hairi, Haibo Yang, Jia Liu, Tian Tong, Fan Yang, Michinari Momma, Yan Gao:
Finite-Time Convergence and Sample Complexity of Actor-Critic Multi-Objective Reinforcement Learning. ICML 2024: 61913-61933
[c15]Zhihao Dou
, Xin Hu
, Haibo Yang
, Zhuqing Liu
, Minghong Fang
:
Adversarial Attacks to Multi-Modal Models. LAMPS@CCS 2024: 35-46
[c14]Peizhong Ju
, Haibo Yang
, Jia Liu
, Yingbin Liang
, Ness B. Shroff
:
Can We Theoretically Quantify the Impacts of Local Updates on the Generalization Performance of Federated Learning? MobiHoc 2024: 141-150
[i17]Haibo Yang, Peiwen Qiu, Prashant Khanduri, Minghong Fang, Jia Liu:
Understanding Server-Assisted Federated Learning in the Presence of Incomplete Client Participation. CoRR abs/2405.02745 (2024)
[i16]Tianchen Zhou, Hairi, Haibo Yang, Jia Liu, Tian Tong, Fan Yang, Michinari Momma, Yan Gao:
Finite-Time Convergence and Sample Complexity of Actor-Critic Multi-Objective Reinforcement Learning. CoRR abs/2405.03082 (2024)
[i15]Zhe Li, Bicheng Ying, Zidong Liu, Haibo Yang:
Achieving Dimension-Free Communication in Federated Learning via Zeroth-Order Optimization. CoRR abs/2405.15861 (2024)
[i14]Peizhong Ju, Haibo Yang, Jia Liu, Yingbin Liang, Ness B. Shroff:
Can We Theoretically Quantify the Impacts of Local Updates on the Generalization Performance of Federated Learning? CoRR abs/2409.03863 (2024)
[i13]Zhihao Dou, Xin Hu, Haibo Yang, Zhuqing Liu, Minghong Fang:
Adversarial Attacks to Multi-Modal Models. CoRR abs/2409.06793 (2024)
[i12]Mingjing Xu
, Peizhong Ju, Jia Liu, Haibo Yang:
PSMGD: Periodic Stochastic Multi-Gradient Descent for Fast Multi-Objective Optimization. CoRR abs/2412.10961 (2024)- 2023
[c13]Haibo Yang, Zhuqing Liu, Jia Liu, Chaosheng Dong, Michinari Momma:
Federated Multi-Objective Learning. NeurIPS 2023
[i11]Haibo Yang, Zhuqing Liu, Jia Liu, Chaosheng Dong, Michinari Momma:
Federated Multi-Objective Learning. CoRR abs/2310.09866 (2023)- 2022
[c12]Prashant Khanduri, Haibo Yang, Mingyi Hong, Jia Liu, Hoi-To Wai, Sijia Liu:
Decentralized Learning for Overparameterized Problems: A Multi-Agent Kernel Approximation Approach. ICLR 2022
[c11]Haibo Yang, Xin Zhang, Prashant Khanduri, Jia Liu:
Anarchic Federated Learning. ICML 2022: 25331-25363
[c10]Haibo Yang, Peiwen Qiu, Jia Liu, Aylin Yener:
Over-the-Air Federated Learning with Joint Adaptive Computation and Power Control. ISIT 2022: 1259-1264
[c9]Xin Zhang, Minghong Fang, Zhuqing Liu, Haibo Yang, Jia Liu, Zhengyuan Zhu
:
NET-FLEET: achieving linear convergence speedup for fully decentralized federated learning with heterogeneous data. MobiHoc 2022: 71-80
[c8]Haibo Yang, Zhuqing Liu, Xin Zhang, Jia Liu:
SAGDA: Achieving $\mathcal{O}(\epsilon^{-2})$ Communication Complexity in Federated Min-Max Learning. NeurIPS 2022
[c7]Haibo Yang, Peiwen Qiu, Jia Liu:
Taming Fat-Tailed ("Heavier-Tailed" with Potentially Infinite Variance) Noise in Federated Learning. NeurIPS 2022
[c6]Jiayu Mao
, Haibo Yang, Peiwen Qiu, Jia Liu, Aylin Yener:
CHARLES: Channel-Quality-Adaptive Over-the-Air Federated Learning over Wireless Networks. SPAWC 2022: 1-5
[i10]Haibo Yang, Peiwen Qiu, Jia Liu, Aylin Yener:
Over-the-Air Federated Learning with Joint Adaptive Computation and Power Control. CoRR abs/2205.05867 (2022)
[i9]Jiayu Mao, Haibo Yang, Peiwen Qiu, Jia Liu, Aylin Yener:
CHARLES: Channel-Quality-Adaptive Over-the-Air Federated Learning over Wireless Networks. CoRR abs/2205.09330 (2022)
[i8]Xin Zhang, Minghong Fang, Zhuqing Liu, Haibo Yang, Jia Liu, Zhengyuan Zhu
:
NET-FLEET: Achieving Linear Convergence Speedup for Fully Decentralized Federated Learning with Heterogeneous Data. CoRR abs/2208.08490 (2022)
[i7]Haibo Yang, Zhuqing Liu, Xin Zhang, Jia Liu:
SAGDA: Achieving O(ε-2) Communication Complexity in Federated Min-Max Learning. CoRR abs/2210.00611 (2022)
[i6]Haibo Yang, Peiwen Qiu, Jia Liu:
Taming Fat-Tailed ("Heavier-Tailed" with Potentially Infinite Variance) Noise in Federated Learning. CoRR abs/2210.00690 (2022)- 2021
[c5]Haibo Yang, Minghong Fang, Jia Liu:
Achieving Linear Speedup with Partial Worker Participation in Non-IID Federated Learning. ICLR 2021
[c4]Prashant Khanduri, Pranay Sharma, Haibo Yang, Mingyi Hong, Jia Liu, Ketan Rajawat, Pramod K. Varshney:
STEM: A Stochastic Two-Sided Momentum Algorithm Achieving Near-Optimal Sample and Communication Complexities for Federated Learning. NeurIPS 2021: 6050-6061
[c3]Haibo Yang, Jia Liu, Elizabeth S. Bentley:
CFedAvg: Achieving Efficient Communication and Fast Convergence in Non-IID Federated Learning. WiOpt 2021: 113-120
[i5]Haibo Yang, Minghong Fang, Jia Liu:
Achieving Linear Speedup with Partial Worker Participation in Non-IID Federated Learning. CoRR abs/2101.11203 (2021)
[i4]Haibo Yang, Jia Liu, Elizabeth S. Bentley:
CFedAvg: Achieving Efficient Communication and Fast Convergence in Non-IID Federated Learning. CoRR abs/2106.07155 (2021)
[i3]Prashant Khanduri, Pranay Sharma, Haibo Yang, Mingyi Hong, Jia Liu, Ketan Rajawat, Pramod K. Varshney:
STEM: A Stochastic Two-Sided Momentum Algorithm Achieving Near-Optimal Sample and Communication Complexities for Federated Learning. CoRR abs/2106.10435 (2021)
[i2]Haibo Yang, Xin Zhang, Prashant Khanduri, Jia Liu:
Anarchic Federated Learning. CoRR abs/2108.09875 (2021)- 2020
[c2]Haibo Yang, Xin Zhang, Minghong Fang, Jia Liu:
Adaptive Multi-Hierarchical signSGD for Communication-Efficient Distributed Optimization. SPAWC 2020: 1-5
2010 – 2019
- 2019
[c1]Haibo Yang, Xin Zhang, Minghong Fang, Jia Liu:
Byzantine-Resilient Stochastic Gradient Descent for Distributed Learning: A Lipschitz-Inspired Coordinate-wise Median Approach. CDC 2019: 5832-5837
[i1]Haibo Yang, Xin Zhang, Minghong Fang, Jia Liu:
Byzantine-Resilient Stochastic Gradient Descent for Distributed Learning: A Lipschitz-Inspired Coordinate-wise Median Approach. CoRR abs/1909.04532 (2019)
Coauthor Index

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last updated on 2026-05-02 00:08 CEST by the dblp team
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