Fabian, Christian ; Cui, Kai ; Koeppl, Heinz (2024)
Learning Sparse Graphon Mean Field Games.
International Conference on Artificial Intelligence and Statistics. Palau de Congressos, Valencia, Spain (25.04.2023 - 27.04.2023)
doi: 10.26083/tuprints-00028917
Conference or Workshop Item, Secondary publication, Publisher's Version
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Item Type: | Conference or Workshop Item |
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Type of entry: | Secondary publication |
Title: | Learning Sparse Graphon Mean Field Games |
Language: | English |
Date: | 17 December 2024 |
Place of Publication: | Darmstadt |
Year of primary publication: | 2023 |
Publisher: | PMLR |
Book Title: | Proceedings of The 26th International Conference on Artificial Intelligence and Statistics |
Series: | Proceedings of Machine Learning Research |
Series Volume: | 206 |
Event Title: | International Conference on Artificial Intelligence and Statistics |
Event Location: | Palau de Congressos, Valencia, Spain |
Event Dates: | 25.04.2023 - 27.04.2023 |
DOI: | 10.26083/tuprints-00028917 |
Corresponding Links: | |
Origin: | Secondary publication service |
Abstract: | Although the field of multi-agent reinforcement learning (MARL) has made considerable progress in the last years, solving systems with a large number of agents remains a hard challenge. Graphon mean field games (GMFGs) enable the scalable analysis of MARL problems that are otherwise intractable. By the mathematical structure of graphons, this approach is limited to dense graphs which are insufficient to describe many real-world networks such as power law graphs. Our paper introduces a novel formulation of GMFGs, called LPGMFGs, which leverages the graph theoretical concept of Lp graphons and provides a machine learning tool to efficiently and accurately approximate solutions for sparse network problems. This especially includes power law networks which are empirically observed in various application areas and cannot be captured by standard graphons. We derive theoretical existence and convergence guarantees and give empirical examples that demonstrate the accuracy of our learning approach for systems with many agents. Furthermore, we extend the Online Mirror Descent (OMD) learning algorithm to our setup to accelerate learning speed, empirically show its capabilities, and conduct a theoretical analysis using the novel concept of smoothed step graphons. In general, we provide a scalable, mathematically well-founded machine learning approach to a large class of otherwise intractable problems of great relevance in numerous research fields. |
Status: | Publisher's Version |
URN: | urn:nbn:de:tuda-tuprints-289179 |
Classification DDC: | 000 Generalities, computers, information > 004 Computer science 600 Technology, medicine, applied sciences > 621.3 Electrical engineering, electronics |
Divisions: | 18 Department of Electrical Engineering and Information Technology > Self-Organizing Systems Lab |
Date Deposited: | 17 Dec 2024 09:46 |
Last Modified: | 17 Dec 2024 09:47 |
URI: | https://tuprints.ulb.tu-darmstadt.de/id/eprint/28917 |
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