Seminar • Artificial Intelligence • Trustworthy Machine Learning under Social and Adversarial Data SourcesExport this event to calendar

Wednesday, March 20, 2024 — 10:30 AM to 11:30 AM EDT

Please note: This seminar will take place in DC 1304.

Han Shao, PhD candidate
Toyota Technological Institute at Chicago

Machine learning has witnessed remarkable breakthroughs in recent years. Many machine learning techniques assume that the training and test data are sampled from an underlying distribution and aim to find a predictor with low population loss. However, in the real world, data may be generated by strategic individuals, collected by self-interested data collectors, possibly poisoned by adversarial attackers, and used to create predictors, models, and policies satisfying multiple objectives. As a result, predictors may underperform. To ensure the success of machine learning, it is crucial to develop trustworthy algorithms capable of handling these factors.


Bio: Han Shao is a fifth-year Ph.D. student at Toyota Technological Institute at Chicago (TTIC), advised by Prof. Avrim Blum. Her research focuses on theoretical foundations of machine learning, with a specific focus on fundamental questions arising from human social and adversarial behaviors in the learning process. She is interested in understanding how these behaviors affect machine learning systems and developing methods to enhance accuracy/robustness. Additionally, she is interested in gaining a theoretical understanding of empirical observations concerning adversarial robustness.

Her papers have been published at machine learning venues including NeurIPS, ICML, COLT, etc. She was awarded EECS Rising Star by Georgia Tech and Rising Star in Machine Learning by the University of Maryland in 2023.

Location 
DC - William G. Davis Computer Research Centre
DC 1304
200 University Avenue West

Waterloo, ON N2L 3G1
Canada
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