DeepStack: Expert-level artificial intelligence in heads-up no-limit poker
- PMID: 28254783
- DOI: 10.1126/science.aam6960
DeepStack: Expert-level artificial intelligence in heads-up no-limit poker
Abstract
Artificial intelligence has seen several breakthroughs in recent years, with games often serving as milestones. A common feature of these games is that players have perfect information. Poker, the quintessential game of imperfect information, is a long-standing challenge problem in artificial intelligence. We introduce DeepStack, an algorithm for imperfect-information settings. It combines recursive reasoning to handle information asymmetry, decomposition to focus computation on the relevant decision, and a form of intuition that is automatically learned from self-play using deep learning. In a study involving 44,000 hands of poker, DeepStack defeated, with statistical significance, professional poker players in heads-up no-limit Texas hold'em. The approach is theoretically sound and is shown to produce strategies that are more difficult to exploit than prior approaches.
Copyright © 2017, American Association for the Advancement of Science.
Comment in
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How rival bots battled their way to poker supremacy.Nature. 2017 Mar 2;543(7644):160-161. doi: 10.1038/nature.2017.21580. Nature. 2017. PMID: 28277536 No abstract available.
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