Learning Prices for Repeated Auctions with Strategic Buyers
Amin, Kareem, Rostamizadeh, Afshin, Syed, Umar
–Neural Information Processing Systems
Inspired by real-time ad exchanges for online display advertising, we consider the problem of inferring a buyer's value distribution for a good when the buyer is repeatedly interacting with a seller through a posted-price mechanism.Wemodel the buyer as a strategic agent, whose goal is to maximize her long-term surplus, and we are interested in mechanisms that maximize the seller's long-term revenue. We define the natural notion of strategic regret --thelostrevenueasmeasured against a truthful (non-strategic) buyer. We present seller algorithms that are no- (strategic)-regret when the buyer discounts her future surplus -- i.e. the buyer prefers showing advertisements to users sooner rather than later. We also give a lower bound on strategic regret that increases as the buyer's discountingweakens and shows, in particular, that any seller algorithm will suffer linear strategic regret if there is no discounting.
Neural Information Processing Systems
Dec-31-2013