Mastering percolation-like games with deep learning

Though robustness of networks to random attacks has been widely studied, intentional destruction by an intelligent agent is not tractable with previous methods. Here we devise a single-player game on a lattice that mimics the logic of an attacker attempting to destroy a network. The objective of the...

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Veröffentlicht in:Physical review research 2024-01, Vol.6 (1), p.013067, Article 013067
Hauptverfasser: Danziger, Michael M., Gojala, Omkar R., Cornelius, Sean P.
Format: Artikel
Sprache:eng
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Zusammenfassung:Though robustness of networks to random attacks has been widely studied, intentional destruction by an intelligent agent is not tractable with previous methods. Here we devise a single-player game on a lattice that mimics the logic of an attacker attempting to destroy a network. The objective of the game is to disable all nodes in the fewest number of steps. We develop a reinforcement learning approach using deep Q -learning that is capable of learning to play this game successfully, and in so doing, to optimally attack a network. Because the learning algorithm is universal, we train agents on different definitions of robustness and compare the learned strategies. We find that superficially similar definitions of robustness induce different strategies in the trained agent, implying that optimally attacking or defending a network is sensitive to the particular objective. Our method provides an approach to understand network robustness, with potential applications to other discrete processes in disordered systems.
ISSN:2643-1564
2643-1564
DOI:10.1103/PhysRevResearch.6.013067