Deep Learning for Multi-Facility Location Mechanism Design

Author:

Golowich Noah1,Narasimhan Harikrishna1,Parkes David C.1

Affiliation:

1. Harvard University, SEAS, 33 Oxford Street, Cambridge, MA, 02138

Abstract

Moulin [1980] characterizes the single-facility, deterministic strategy-proof mechanisms for social choice with single-peaked preferences as the set of generalized median rules. In contrast, we have only a limited understanding of multi-facility strategy-proof mechanisms, and recent work has shown negative worst case results for social cost. Our goal is to design strategy-proof, multi-facility mechanisms that minimize expected social cost. We first give a PAC learnability result for the class of multi-facility generalized median rules, and utilize neural networks to learn mechanisms from this class. Even in the absence of characterization results, we develop a computational procedure for learning almost strategy-proof mechanisms that are as good as or better than benchmarks from the literature, such as the best percentile and dictatorial rules.

Publisher

International Joint Conferences on Artificial Intelligence Organization

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