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Stochastics and Statistics Seminar Series

Tractable Agreement Protocols

May 2, 2025 @ 11:00 am - 12:00 pm

Aaron Roth (University of Pennsylvania)

E18-304

Abstract: As ML models become increasingly powerful, it is an attractive proposition to use them in important decision making pipelines, in collaboration with human decision makers. But how should a human being and a machine learning model collaborate to reach decisions that are better than either of them could achieve on their own? If the human and the ML model were perfect Bayesians, operating in a setting with a commonly known and correctly specified prior, Aumann’s classical agreement theorem would give us one answer: they could engage in conversation about the task at hand, and their conversation would be guaranteed to converge to (accuracy-improving) agreement. This classical result however would require making many implausible assumptions, both about the knowledge and computational power of both parties. We show how to recover similar (and more general) results using only computationally and statistically tractable assumptions, which substantially relax full Bayesian rationality. We further give weak-learning conditions under which this collaboration will result in “information aggregation” — i.e. predictions that are as accurate as could have been made by a model that had access to -both- party’s observations, even though neither party in the interaction actually has access to these pooled observations.

Joint work with Natalie Collina, Varun Gupta, and Surbhi Goel, based on a paper that will appear in STOC 2025, and with Natalie Collina, Ira Globus-Harris, Varun Gupta, Surbhi Goel, and Mirah Shi based on a new preprint.
Bio: Aaron Roth is the Henry Salvatori Professor of Computer and Cognitive Science, in the Computer and Information Sciences department at the University of Pennsylvania, with a secondary appointment in the Wharton statistics department. He is affiliated with the Warren Center for Network and Data Science, and co-director of the Networked and Social Systems Engineering (NETS) program.  He is also an Amazon Scholar at Amazon AWS. He is the recipient of the Hans Sigrist Prize, a Presidential Early Career Award for Scientists and Engineers (PECASE), an Alfred P. Sloan Research Fellowship, an NSF CAREER award, and research awards from Yahoo, Amazon, and Google.  His research focuses on the algorithmic foundations of data privacy, algorithmic fairness, game theory, learning theory, and machine learning.  Together with Cynthia Dwork, he is the author of the book “The Algorithmic Foundations of Differential Privacy.” Together with Michael Kearns, he is the author of “The Ethical Algorithm”.

MIT Institute for Data, Systems, and Society
Massachusetts Institute of Technology
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