certifying strategyproof auction network
Certifying Strategyproof Auction Networks
Optimal auctions maximize a seller's expected revenue subject to individual rationality and strategyproofness for the buyers. Myerson's seminal work in 1981 settled the case of auctioning a single item; however, subsequent decades of work have yielded little progress moving beyond a single item, leaving the design of revenue-maximizing auctions as a central open problem in the field of mechanism design. A recent thread of work in ``differentiable economics'' has used tools from modern deep learning to instead learn good mechanisms. We focus on the RegretNet architecture, which can represent auctions with arbitrary numbers of items and participants; it is trained to be empirically strategyproof, but the property is never exactly verified leaving potential loopholes for market participants to exploit. We propose ways to explicitly verify strategyproofness under a particular valuation profile using techniques from the neural network verification literature. Doing so requires making several modifications to the RegretNet architecture in order to represent it exactly in an integer program. We train our network and produce certificates in several settings, including settings for which the optimal strategyproof mechanism is not known.
Review for NeurIPS paper: Certifying Strategyproof Auction Networks
Additional Feedback: 49, 59, 74 – The discussion here talks a bit loosely about certifying the strategyproofness of auctions. However, this is not quite what gets certified, and this is an important caveat that should be made more explicit. In particular, what gets certified is the amount by which agents can manipulate on particular type profiles. This makes no guarantees about the incentives on any other type profile, so it is a bit misleading to describe the approach as certifying the extent of strategyproofness full stop. The abstract (11) is more careful and explicit about this. Based on the description of the 3 trained networks (225-230), none of them seem to use it.
Certifying Strategyproof Auction Networks
Optimal auctions maximize a seller's expected revenue subject to individual rationality and strategyproofness for the buyers. Myerson's seminal work in 1981 settled the case of auctioning a single item; however, subsequent decades of work have yielded little progress moving beyond a single item, leaving the design of revenue-maximizing auctions as a central open problem in the field of mechanism design. A recent thread of work in differentiable economics'' has used tools from modern deep learning to instead learn good mechanisms. We focus on the RegretNet architecture, which can represent auctions with arbitrary numbers of items and participants; it is trained to be empirically strategyproof, but the property is never exactly verified leaving potential loopholes for market participants to exploit. We propose ways to explicitly verify strategyproofness under a particular valuation profile using techniques from the neural network verification literature.