论文标题

检测个人决策样式:探索国际象棋的行为风格测定法

Detecting Individual Decision-Making Style: Exploring Behavioral Stylometry in Chess

论文作者

McIlroy-Young, Reid, Wang, Russell, Sen, Siddhartha, Kleinberg, Jon, Anderson, Ashton

论文摘要

超过人类决策能力的机器学习模型的出现,在复杂的领域中启动了一项运动,旨在建立与人类互动的AI系统。许多构建基础对于这项活动至关重要,中心是人类行为的算法表征。尽管现有的大部分工作都集中在人类的总体行为上,但一个重要的远程目标是开发专门针对个人人并可以在其中区分的行为模型。 为了使这个过程形式化,我们研究了行为风格的问题,其中任务是仅从决策中确定决策者。我们提出了一种基于变压器的方法,用于在国际象棋的背景下进行行为风格测定法,其中有人试图识别玩一组游戏的玩家。我们的方法在几个射击分类框架中运行,并且只有100个标记的游戏,可以从数千名候选人中正确识别一个候选人中的玩家。即使接受业余比赛的训练,我们的方法还是对曾玛斯大师球员的分布样本的普遍性,尽管业余球员和世界一流的球员之间存在巨大差异。最后,我们更广泛地考虑了我们所产生的嵌入有关国际象棋中人类风格的揭示的内容,以及强大方法从行为数据中识别个人的潜在伦理含义。

The advent of machine learning models that surpass human decision-making ability in complex domains has initiated a movement towards building AI systems that interact with humans. Many building blocks are essential for this activity, with a central one being the algorithmic characterization of human behavior. While much of the existing work focuses on aggregate human behavior, an important long-range goal is to develop behavioral models that specialize to individual people and can differentiate among them. To formalize this process, we study the problem of behavioral stylometry, in which the task is to identify a decision-maker from their decisions alone. We present a transformer-based approach to behavioral stylometry in the context of chess, where one attempts to identify the player who played a set of games. Our method operates in a few-shot classification framework, and can correctly identify a player from among thousands of candidate players with 98% accuracy given only 100 labeled games. Even when trained on amateur play, our method generalises to out-of-distribution samples of Grandmaster players, despite the dramatic differences between amateur and world-class players. Finally, we consider more broadly what our resulting embeddings reveal about human style in chess, as well as the potential ethical implications of powerful methods for identifying individuals from behavioral data.

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