Publications

[Google Scholar] [DBLP] [ORCID]

Preprint

  • [Preprint] Causally Fair Node Classification on Non-IID Graph Data
    Yucong Dai, Lu Zhang, Yaowei Hu, Susan Gauch, Yongkai Wu
    [arXiv]

  • [Preprint] FairSAM: Fair Classification on Corrupted Data Through Sharpness-Aware Minimization
    Yucong Dai, Jie Ji, Xiaolong Ma, Yongkai Wu
    [arXiv]

  • [Preprint] Fair Diagnosis: Leveraging Causal Modeling to Mitigate Medical Bias
    Bowei Tian, Yexiao He, Meng Liu, Yucong Dai, Ziyao Wang, Shwai He, Guoheng Sun, Zheyu Shen, Wanghao Ye, Yongkai Wu, Ang Li
    [arXiv]

  • [Preprint] Coupling Fairness and Pruning in a Single Run: a Bi-level Optimization Perspective
    Yucong Dai, Gen Li, Feng Luo, Xiaolong Ma, Yongkai Wu
    [arXiv]

  • [Preprint] Algorithmic Recourse for Anomaly Detection in Multivariate Time Series
    Xiao Han, Lu Zhang, Yongkai Wu, Shuhan Yuan
    [arXiv]

2025

  • [ICLR '25] Towards Counterfactual Fairness Through Auxiliary Variables
    Bowei Tian, Ziyao Wang, Shwai He, Wanghao Ye, Guoheng Sun, Yucong Dai, Yongkai Wu, Ang Li
    [arXiv]

  • [AAAI '25] Fair Graph U-Net: A Fair Graph Learning Framework Integrating Group and Individual Awareness
    Zichong Wang, Zhibo Chu, Thang Viet Doan, Shaowei Wang, Yongkai Wu, Vasile Palade, Wenbin Zhang [DOI] [DBLP]

2024

  • [NeurIPS '24] SHED: Shapley-Based Automated Dataset Refinement for Instruction Fine-Tuning
    Yexiao He, Ziyao Wang, Zheyu Shen, Guoheng Sun, Yucong Dai, Yongkai Wu, Hongyi Wang, Ang Li
    [arXiv] [Paper] [DBLP]

  • [TMLR '24] From Identifiable Causal Representations to Controllable Counterfactual Generation: A Survey on Causal Generative Modeling
    Aneesh Komanduri, Xintao Wu, Yongkai Wu, Feng Chen
    [arXiv] [Paper] [DBLP]

  • [IJCAI '24] Learning Causally Disentangled Representations via the Principle of Independent Causal Mechanisms
    Aneesh Komanduri, Yongkai Wu, Feng Chen, Xintao Wu
    [arXiv] [DOI] [DBLP]

  • [IJCNN '24] Fair Weak-Supervised Learning: A Multiple-Instance Learning Approach
    Yucong Dai, Xiangyu Jiang, Yaowei Hu, Lu Zhang, Yongkai Wu
    [Paper] [DOI] [DBLP]

  • [IJCNN '24] Achieving Fairness Through Constrained Recourse
    Shuang Wang, Yongkai Wu
    [Paper] [DOI] [DBLP]

  • [IJCNN '24] Achieving Equalized Explainability Through Data Reconstruction
    Shuang Wang, Yongkai Wu
    [Paper] [DOI] [DBLP]

  • [MLSys'24] SiDA: Sparsity-Inspired Data-Aware Serving for Efficient and Scalable Large Mixture-of-Experts Model
    Zhixu Du, Shiyu Li, Yuhao Wu, Xiangyu Jiang, Jingwei Sun, Qilin Zheng, Yongkai Wu, Ang Li, Hai "Helen" Li, Yiran Chen
    [arXiv] [DOI] [DBLP]

  • [SDM '24] Local Differential Privacy in Graph Neural Networks: a Reconstruction Approach
    Karuna Bhaila, Wen Huang, Yongkai Wu, Xintao Wu
    [arXiv] [DOI] [DBLP]

  • [AAAI '24] Long-term Fair Decision Making Through Deep Generative Models
    Yaowei Hu, Yongkai Wu, Lu Zhang
    [arXiv] [DOI] [DBLP] [Poster] [Code]

2023

  • [Book Chapter] Fair Machine Learning Through the Lens of Causality
    Yongkai Wu, Lu Zhang, Xintao Wu
    [DOI]

  • [NeurIPS GLFrontiers '23] Local Differential Privacy in Graph Neural Networks: a Reconstruction Approach
    Karuna Bhaila, Wen Huang, Yongkai Wu, Xintao Wu
    [arXiv]

  • [CRL@NeurIPS '23] Learning Causally Disentangled Representations via the Principle of Independent Causal Mechanisms
    Aneesh Komanduri, Yongkai Wu, Feng Chen, Xintao Wu
    [arXiv]

  • [CIKM '23] On Root Cause Localization and Anomaly Mitigation through Causal Inference
    Xiao Han, Lu Zhang, Yongkai Wu, Shuhan Yuan
    [arXiv] [DOI] [DBLP]

  • [KDD-EAI '23] Long-term Fair Decision Making Through Deep Generative Models
    Yaowei Hu, Yongkai Wu, Lu Zhang

  • [IJCNN '23] Fair Selection Through Kernel Density Estimation
    Xiangyu Jiang, Yucong Dai, Yongkai Wu
    [DOI] [DBLP]

  • [IJCNN '23] Neural Time-Invariant Causal Discovery from Time Series Data
    Saima Absar, Yongkai Wu, Lu Zhang
    [DOI] [DBLP]

  • [PAKDD '23] Achieving Counterfactual Fairness for Anomaly Detection
    Xiao Han, Lu Zhang, Yongkai Wu, Shuhan Yuan
    [arXiv] [DBLP] [DOI] [Code]

2022

  • [Big Data '22] SCM-VAE: Learning Identifiable Causal Representations via Structural Knowledge
    Aneesh Komanduri, Yongkai Wu, Wen Huang, Feng Chen, Xintao Wu
    [DOI] [DBLP]

  • [Big Data '22] Fair Collective Classification in Networked Data
    Karuna Bhaila, Yongkai Wu, Xintao Wu
    [DOI] [DBLP]

2021

  • [AAAI '21] A Generative Adversarial Framework for Bounding Confounded Causal Effects
    Yaowei Hu, Yongkai Wu, Lu Zhang, Xintao Wu
    [Paper] [Code] [DBLP] [Proceeding]

2020

  • [NeurIPS '20] Fair Multiple Decision Making through Soft Interventions
    Yaowei Hu, Yongkai Wu, Lu Zhang, Xintao Wu
    [Paper] [Code] [DBLP] [Proceeding]

  • [SBP-BRiMS '20] Multi-cause Discrimination Analysis Using Potential Outcomes
    Wen Huang, Yongkai Wu, Xintao Wu
    [DOI] [DBLP]

  • [Dissertation] Achieving Causal Fairness in Machine Learning
    Yongkai Wu
    [Paper] [Proquest]

  • [FATES '20] Fairness through Equality of Effort
    Wen Huang, Yongkai Wu, Lu Zhang, Xintao Wu
    [arXiv] [Paper] [DOI] [DBLP] [Proceeding]

2019

2018

  • [TKDE '18] Causal Modeling-Based Discrimination Discovery and Removal: Criteria, Bounds, and Algorithms
    Lu Zhang, Yongkai Wu, Xintao Wu
    [Code] [DOI] [DBLP]

  • [KDD '18] On Discrimination Discovery and Removal in Ranked Data Using Causal Graph
    Yongkai Wu, Lu Zhang, Xintao Wu
    [arXiv] [Paper] [Code] [DOI] [DBLP]

  • [IJCAI '18] Achieving Non-Discrimination in Prediction
    Lu Zhang, Yongkai Wu, Xintao Wu
    [arXiv] [Paper] [Code] [DOI] [DBLP]

2017

  • [IJCAI '17] A Causal Framework for Discovering and Removing Direct and Indirect Discrimination
    Lu Zhang, Yongkai Wu, Xintao Wu
    [arXiv] [Paper] [Code] [DOI] [DBLP]

  • [KDD '17] Achieving Non-Discrimination in Data Release
    Lu Zhang, Yongkai Wu, Xintao Wu
    [arXiv] [Paper] [Code] [DOI] [DBLP]

  • [PAC '17] DPWeka: Achieving Differential Privacy in WEKA
    Srinidhi Katla, Depeng Xu, Yongkai Wu, Qiuping Pan, Xintao Wu
    [Code] [DOI] [DBLP]

2016

  • [DSAA '16] Using Loglinear Model for Discrimination Discovery and Prevention
    Yongkai Wu, Xintao Wu
    [Paper] [DOI] [DBLP]

  • [IJCAI '16] Situation Testing-Based Discrimination Discovery: A Causal Inference Approach
    Lu Zhang, Yongkai Wu, Xintao Wu
    [Paper] [DBLP] [Proceeding]

  • [SBP-BRiMS '16] On Discrimination Discovery Using Causal Networks
    Lu Zhang, Yongkai Wu, Xintao Wu
    [Paper] [DOI] [DBLP]