Advancing Differentiable Economics: A Neural Network Framework for Revenue-Maximizing Combinatorial Auction Mechanisms
Mai Pham, Vikrant Vaze, Peter Chin

TL;DR
This paper introduces neural network architectures CANet and CAFormer to design revenue-maximizing combinatorial auction mechanisms, overcoming previous scalability and structural limitations in differentiable economics.
Contribution
It presents scalable neural network models for combinatorial auctions that do not rely on restrictive assumptions, advancing the application of differentiable economics to complex auction settings.
Findings
Models outperform heuristic benchmarks in combinatorial auctions.
Approaches match existing methods in non-combinatorial settings.
Set new benchmarks for revenue-maximizing combinatorial mechanisms.
Abstract
Differentiable economics, which uses neural networks as function approximators and gradient-based optimization in automated mechanism design (AMD), marked a significant breakthrough with the introduction of RegretNet \citep{regretnet_paper}. It combines the flexibility of deep learning with a regret-based approach to relax incentive compatibility, allowing for approximations of revenue-maximizing auctions. However, applying these techniques to combinatorial auctions (CAs) - where bidders value bundles rather than individual items, capturing item interdependencies - remains a challenge, primarily due to the lack of methodologies that can effectively deal with combinatorial constraints. To tackle this, we propose two architectures: CANet, a fully connected neural network, and CAFormer, a transformer-based model designed to learn optimal randomized mechanisms. Unlike existing methods in…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsAuction Theory and Applications · Consumer Market Behavior and Pricing
