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arxiv: 2009.06136 · v1 · pith:VLACUMCBnew · submitted 2020-09-14 · 💻 cs.GT

Convergence Analysis of No-Regret Bidding Algorithms in Repeated Auctions

classification 💻 cs.GT
keywords algorithmsno-regretconvergenceequilibriumauctionauctionsbiddersbidding
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The connection between games and no-regret algorithms has been widely studied in the literature. A fundamental result is that when all players play no-regret strategies, this produces a sequence of actions whose time-average is a coarse-correlated equilibrium of the game. However, much less is known about equilibrium selection in the case that multiple equilibria exist. In this work, we study the convergence of no-regret bidding algorithms in auctions. Besides being of theoretical interest, bidding dynamics in auctions is an important question from a practical viewpoint as well. We study repeated game between bidders in which a single item is sold at each time step and the bidder's value is drawn from an unknown distribution. We show that if the bidders use any mean-based learning rule then the bidders converge with high probability to the truthful pure Nash Equilibrium in a second price auction, in VCG auction in the multi-slot setting and to the Bayesian Nash equilibrium in a first price auction. We note mean-based algorithms cover a wide variety of known no-regret algorithms such as Exp3, UCB, $\epsilon$-Greedy etc. Also, we analyze the convergence of the individual iterates produced by such learning algorithms, as opposed to the time-average of the sequence. Our experiments corroborate our theoretical findings and also find a similar convergence when we use other strategies such as Deep Q-Learning.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Markets with Heterogeneous Agents: Dynamics and Survival of Bayesian vs. No-Regret Learners

    cs.GT 2025-02 unverdicted novelty 7.0

    Bayesian learners can drive out no-regret learners despite logarithmic regret in stochastic markets, but no-regret is more robust; hybrids are proposed to combine strengths.