
Linglong Kong
differential privacy
risk quantification
synthetic dataset
statistics inference; streaming data;
statistical inference
privacy preserving generative ai
robustness against distribution shifts
debias; algorithmic fairness; vector representation; sufficient dimension reduction
6
presentations
5
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Presentations

Debiasing with Sufficient Projection: A General Theoretical Framework for Vector Representations
Enze Shi and 3 other authors

Responsible Bandit Learning via Privacy-Protected Mean-Volatility Utility | VIDEO
Shanshan Zhao and 4 other authors

Analysis of Differentially Private Synthetic Data: A Measurement Error Approach
Yangdi Jiang and 5 other authors

Opposite Online Learning via Sequentially Integrated Stochastic Gradient Descent Estimators
Xiaodong Yan and 3 other authors

Word Embeddings via Causal Inference: Gender Bias Reducing and Semantic Information Preserving
Lei Ding and 9 other authors

Sample Average Approximation for Stochastic Optimization with Dependent Data: Performance Guarantees and Tractability
Yafei Wang and 8 other authors