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Non-Bayesian Information Design: Learning and LLM-Based Approaches

Jan 7, 2026ยท
Tao Lin
Tao Lin
ยท 0 min read
Slides
Abstract
Overview of my research about Information Design with Learning Agent and with LLM.
Event
Visit to SHUFE, SJTU, and Huawei
Location

Shanghai

China

Last updated on Jan 7, 2026
Tao Lin
Authors
Tao Lin
PhD in Computer Science

Information Design with Large Language Models Jan 4, 2026 →

ยฉ 2026. This work is licensed under CC BY NC ND 4.0

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