Яндекс Метрика
Игровой ИИ

DeepStack

University of Alberta,Charles University,Czech Technical University
Poker

DeepStack стал настоящим прорывом в области игрового ИИ, первым в мире обыграв профессионалов в покер. В отличие от шахмат, эта модель работает в условиях неполной информации, используя рекурсивные алгоритмы и глубокое обучение для принятия решений в режиме реального времени.

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 is the quintessential game of imperfect information, and a longstanding 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 more difficult to exploit strategies than prior approaches.

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