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A Context-Integrated Transformer-Based Neural Network for Auction Design

International Conference on Machine Learning (ICML), 2022
29 January 2022
Zhijian Duan
Jin-Lin Tang
Yutong Yin
Zhe Feng
Xiang Yan
Manzil Zaheer
Xiaotie Deng
ArXiv (abs)PDFHTML
Abstract

One of the central problems in auction design is developing an incentive-compatible mechanism that maximizes the auctioneer's expected revenue. While theoretical approaches have encountered bottlenecks in multi-item auctions, recently, there has been much progress on finding the optimal mechanism through deep learning. However, these works either focus on a fixed set of bidders and items, or restrict the auction to be symmetric. In this work, we overcome such limitations by factoring \emph{public} contextual information of bidders and items into the auction learning framework. We propose CITransNet\mathtt{CITransNet}CITransNet, a context-integrated transformer-based neural network for optimal auction design, which maintains permutation-equivariance over bids and contexts while being able to find asymmetric solutions. We show by extensive experiments that CITransNet\mathtt{CITransNet}CITransNet can recover the known optimal solutions in single-item settings, outperform strong baselines in multi-item auctions, and generalize well to cases other than those in training.

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