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From Monopoly to Competition: When Do Optimal Contests Prevail?

Jul 1, 2025ยท
(Alphabet) Xiaotie Deng
,
Yotam Gafni
,
Ron Lavi
,
Tao Lin
,
Hongyi Ling
ยท 1 min read
PDF Cite DOI URL

Full journal version of our AAAI 2023 paper “From Monopoly to Competition: Optimal Contests Prevail”.

Last updated on Jul 1, 2025
Game Theory Contest Theory

← Generalized Principal-Agent Problem with a Learning Agent Oct 13, 2025

ยฉ 2025. This work is licensed under CC BY NC ND 4.0

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