题目:Machine Learning and Matching Markets
时间:2024年9月23日 10:30-12:00
地点:hga010网页登录 F207会议室
邀请人:李勇祥 副教授 (工业工程与管理系)
Biography
Xiaowu Dai is an assistant professor of Statistics and Data Science, and of Biostatistics, at UCLA. Previously, he was a postdoc at UC Berkeley from 2019-2022, advised by Michael I. Jordan. Before that, he received a Ph.D. in Statistics from UW-Madison, advised by Grace Wahba. Xiaowu received his B.S. from the Department of Mathematics at Shanghai Jiao Tong University, China, in 2014. His research is focused on developing statistical theory and methodology to address real-world problems that involve computational, inferential, and economic considerations.
Abstract
We study the problem of decision-making in the setting of a scarcity of shared resources when the preferences of agents are unknown a priori and must be learned from data. Taking the two-sided matching market as a running example, we focus on the decentralized setting, where agents do not share their learned preferences with a central authority. Our approach is based on the representation of preferences in a reproducing kernel Hilbert space, and a learning algorithm for preferences that accounts for uncertainty due to the competition among the agents in the market. Under regularity conditions, we show that our estimator of preferences converges at a minimax optimal rate. Given this result, we derive optimal strategies that maximize agents' expected payoffs and we calibrate the uncertain state by taking opportunity costs into account. We also derive an incentive-compatibility property and show that the outcome from the learned strategies has a stability property. Finally, we prove a fairness property that asserts that there exists no justified envy according to the learned strategies.