AI systems that can capture human-like behavior are becoming increasingly useful in situations where humans may want to learn from these systems, collaborate with them, or engage with them as partners for an extended duration. In order to develop human-oriented AI systems, the problem of predicting human actions -- as opposed to predicting optimal actions -- has received considerable attention. Existing work has focused on capturing human behavior in an aggregate sense, which potentially limits the benefit any particular individual could gain from interaction with these systems. We extend this line of work by developing highly accurate predictive models of individual human behavior in chess. Chess is a rich domain for exploring human-AI interaction because it combines a unique set of properties: AI systems achieved superhuman performance many years ago, and yet humans still interact with them closely, both as opponents and as preparation tools, and there is an enormous corpus of recorded data on individual player games. Starting with Maia, an open-source version of AlphaZero trained on a population of human players, we demonstrate that we can significantly improve prediction accuracy of a particular player's moves by applying a series of fine-tuning methods. Furthermore, our personalized models can be used to perform stylometry -- predicting who made a given set of moves -- indicating that they capture human decision-making at an individual level. Our work demonstrates a way to bring AI systems into better alignment with the behavior of individual people, which could lead to large improvements in human-AI interaction.
翻译:在人类可能希望从这些系统中学习、与它们合作或作为伙伴参与长期合作的情况下,能够捕捉类似人类行为的AI系统正在变得越来越有用。为了发展面向人类的AI系统,预测人类行动的问题 -- -- 而不是预测最佳行动 -- -- 已经受到相当多的关注。现有工作侧重于从整体意义上捕捉人类行为,这可能限制任何特定个人从与这些系统的互动中可能获得的好处。我们通过开发高准确的预测模型来扩展这一系列工作。象棋是探索人类-AI互动的一个丰富领域,因为它结合了一套独特的特性:AI系统在很多年前就取得了超人性的表现,然而人类仍然作为对手和作为准备工具与它们密切地互动,还有大量关于个体玩家游戏的记录数据。从Maia开始,这是一个为人类玩家群体培训的AlphaZero的公开源版本。我们通过应用一系列的微调方法来大大改进某个特定参与者的动作的预测准确性。此外,我们的个人化模型可以用来预测一个更精确的动作,在个人系统中进行一个更精确的动作。此外,我们的个人化模型可以用来用来预测一个更精确地测量我们的个人行为系统。