Learning Revenue-Maximizing Auctions With Differentiable Matching
Michael J. Curry,
Uro Lyi,
Tom Goldstein
et al.
Abstract:We propose a new architecture to approximately learn incentive compatible, revenue-maximizing auctions from sampled valuations. Our architecture uses the Sinkhorn algorithm to perform a differentiable bipartite matching which allows the network to learn strategyproof revenue-maximizing mechanisms in settings not learnable by the previous RegretNet architecture. In particular, our architecture is able to learn mechanisms in settings without free disposal where each bidder must be allocated exactly some number o… Show more
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