Researchers have demonstrated that neural networks are vulnerable to adversarial examples and subtle environment changes, both of which one can view as a form of distribution shift. To humans, the resulting errors can look like blunders, eroding trust in these agents. In prior games research, agent evaluation often focused on the in-practice game outcomes. While valuable, such evaluation typically fails to evaluate robustness to worst-case outcomes. Prior research in computer poker has examined how to assess such worst-case performance, both exactly and approximately. Unfortunately, exact computation is infeasible with larger domains, and existing approximations rely on poker-specific knowledge. We introduce ISMCTS-BR, a scalable search-bas...
Algorithms for equilibrium computation generally make no attempt to ensure that the computed strateg...
International audienceWe present a Texas Hold'em poker player for limit heads-up games. Our bot is d...
Poker, especially Texas Hold’em Poker, is a challenging game and top professionals win large amounts...
Many real-world applications can be described as large-scale games of imperfect information. To deal...
Extensive-form games are a powerful tool for representing complex multi-agent interactions. Nash equ...
In the development of artificial intelligence (AI), games have often served as benchmarks to promote...
Limited look-ahead game solving for imperfect-information games is the breakthrough that allowed def...
The leading approach for computing strong game-theoretic strategies in large imperfect-information g...
Games have a long history of serving as a benchmark for progress in artificial intelligence. Recentl...
This thesis investigates artificial agents learning to make strategic decisions in imperfect-informa...
Abstract We address the problem of interpretability in iterative game solving for imper...
Poker is a large complex game of imperfect information, which has been singled out as a major AI cha...
In recent years, deep neural networks for strategy games have made significant progress. AlphaZero-l...
Until recently, AI research that used games as an experimental testbed has concentrated on perfect i...
This article discusses two contributions to decision-making in complex partially observable stochast...
Algorithms for equilibrium computation generally make no attempt to ensure that the computed strateg...
International audienceWe present a Texas Hold'em poker player for limit heads-up games. Our bot is d...
Poker, especially Texas Hold’em Poker, is a challenging game and top professionals win large amounts...
Many real-world applications can be described as large-scale games of imperfect information. To deal...
Extensive-form games are a powerful tool for representing complex multi-agent interactions. Nash equ...
In the development of artificial intelligence (AI), games have often served as benchmarks to promote...
Limited look-ahead game solving for imperfect-information games is the breakthrough that allowed def...
The leading approach for computing strong game-theoretic strategies in large imperfect-information g...
Games have a long history of serving as a benchmark for progress in artificial intelligence. Recentl...
This thesis investigates artificial agents learning to make strategic decisions in imperfect-informa...
Abstract We address the problem of interpretability in iterative game solving for imper...
Poker is a large complex game of imperfect information, which has been singled out as a major AI cha...
In recent years, deep neural networks for strategy games have made significant progress. AlphaZero-l...
Until recently, AI research that used games as an experimental testbed has concentrated on perfect i...
This article discusses two contributions to decision-making in complex partially observable stochast...
Algorithms for equilibrium computation generally make no attempt to ensure that the computed strateg...
International audienceWe present a Texas Hold'em poker player for limit heads-up games. Our bot is d...
Poker, especially Texas Hold’em Poker, is a challenging game and top professionals win large amounts...