OCLGFeb 28, 2023

Deep Learning for Mean Field Optimal Transport

arXiv:2302.14739v13 citationsh-index: 31
Originality Synthesis-oriented
AI Analysis

This work addresses computational challenges in mean field control for large populations, with applications in economics, finance, and engineering, but it is incremental as it adapts existing neural network techniques to a specific problem variant.

The paper tackles mean field optimal transport problems, which generalize classical optimal transport by incorporating mean field interactions, and proposes three neural network-based numerical methods, demonstrating them with experiments on two example families.

Mean field control (MFC) problems have been introduced to study social optima in very large populations of strategic agents. The main idea is to consider an infinite population and to simplify the analysis by using a mean field approximation. These problems can also be viewed as optimal control problems for McKean-Vlasov dynamics. They have found applications in a wide range of fields, from economics and finance to social sciences and engineering. Usually, the goal for the agents is to minimize a total cost which consists in the integral of a running cost plus a terminal cost. In this work, we consider MFC problems in which there is no terminal cost but, instead, the terminal distribution is prescribed. We call such problems mean field optimal transport problems since they can be viewed as a generalization of classical optimal transport problems when mean field interactions occur in the dynamics or the running cost function. We propose three numerical methods based on neural networks. The first one is based on directly learning an optimal control. The second one amounts to solve a forward-backward PDE system characterizing the solution. The third one relies on a primal-dual approach. We illustrate these methods with numerical experiments conducted on two families of examples.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes