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AUCTION LEARNING AS A TWO-PLAYER GAME
Jad Rahme
, Samy Jelassi
,
S. Matthew Weinberg
Computer Science
Bendheim Center for Finance
Center for Information Technology Policy (CITP)
Research output
:
Contribution to conference
›
Paper
›
peer-review
23
Scopus citations
Overview
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Keyphrases
Auction Design
100%
Expected Profit
33%
Incentive Mechanism
33%
Lagrangian
33%
Neural Network
33%
Neural Network Architecture
33%
Novel Formulations
33%
Optimal Auction
33%
Optimization Procedure
33%
Parameter Search
33%
Performance Enhancement
33%
Single Metrics
33%
Two-player Games
100%
Under-report
33%
Utility Function
33%
Computer Science
Neural Network
100%
Neural Network Architecture
100%
Research Direction
100%
Theoretical Approach
100%
Utility Function
100%