Learning in Auctions: Regret is Hard, Envy is Easy
Constantinos Daskalakis, Vasilis Syrgkanis

TL;DR
This paper demonstrates the computational hardness of no-regret learning in simultaneous second-price auctions and introduces a tractable alternative called no-envy learning, which achieves near-optimal welfare with efficient algorithms.
Contribution
It proves no polynomial-time no-regret algorithms exist for SiSPAs unless RP=NP and proposes no-envy learning as a computationally efficient alternative with strong welfare guarantees.
Findings
No-regret algorithms are computationally infeasible for SiSPAs.
No-envy learning achieves approximate welfare optimality efficiently.
Introduces novel algorithms for online learning with complex payoff functions.
Abstract
A line of recent work provides welfare guarantees of simple combinatorial auction formats, such as selling m items via simultaneous second price auctions (SiSPAs) (Christodoulou et al. 2008, Bhawalkar and Roughgarden 2011, Feldman et al. 2013). These guarantees hold even when the auctions are repeatedly executed and players use no-regret learning algorithms. Unfortunately, off-the-shelf no-regret algorithms for these auctions are computationally inefficient as the number of actions is exponential. We show that this obstacle is insurmountable: there are no polynomial-time no-regret algorithms for SiSPAs, unless RP NP, even when the bidders are unit-demand. Our lower bound raises the question of how good outcomes polynomially-bounded bidders may discover in such auctions. To answer this question, we propose a novel concept of learning in auctions, termed "no-envy learning."…
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Taxonomy
TopicsAuction Theory and Applications · Advanced Bandit Algorithms Research · Experimental Behavioral Economics Studies
