LEARNING TRUTHFUL, EFFICIENT, AND WELFARE MAXIMIZING AUCTION RULES
Andrea Tacchetti, DJ Strouse, Marta Garnelo, Thore Graepel, Yoram Bachrach
ABSTRACT
From social networks to supply chains, more and more aspects of how humans,
firms and organizations interact is mediated by artificial learning agents. As the
influence of machine learning systems grows, it is paramount that we study how
to imbue our modern institutions with our own values and principles. Here we
consider the problem of allocating goods to buyers who have preferences over
them in settings where the seller’s aim is not to maximize their monetary gains,
but rather to advance some notion of social welfare (e.g. the government trying
to award construction licenses for hospitals or schools). This problem has a long
history in economics, and solutions take the form of auction rules. Researchers
have proposed reliable auction rules that work in extremely general settings, and
in the presence of information asymmetry and strategic buyers. However, these
protocols require significant payments from participants resulting in low aggregate
welfare. Here we address this shortcoming by casting auction rule design as a
statistical learning problem, and trade generality for participant welfare effectively
and automatically with a novel deep learning network architecture and auction
representation. Our analysis shows that our auction rules outperform state-of-the
art approaches in terms of participants welfare, applicability, robustness.