Baker Chris L, Saxe Rebecca, Tenenbaum Joshua B
Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139, United States.
Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139, United States.
Cognition. 2009 Dec;113(3):329-349. doi: 10.1016/j.cognition.2009.07.005. Epub 2009 Sep 2.
Humans are adept at inferring the mental states underlying other agents' actions, such as goals, beliefs, desires, emotions and other thoughts. We propose a computational framework based on Bayesian inverse planning for modeling human action understanding. The framework represents an intuitive theory of intentional agents' behavior based on the principle of rationality: the expectation that agents will plan approximately rationally to achieve their goals, given their beliefs about the world. The mental states that caused an agent's behavior are inferred by inverting this model of rational planning using Bayesian inference, integrating the likelihood of the observed actions with the prior over mental states. This approach formalizes in precise probabilistic terms the essence of previous qualitative approaches to action understanding based on an "intentional stance" [Dennett, D. C. (1987). The intentional stance. Cambridge, MA: MIT Press] or a "teleological stance" [Gergely, G., Nádasdy, Z., Csibra, G., & Biró, S. (1995). Taking the intentional stance at 12 months of age. Cognition, 56, 165-193]. In three psychophysical experiments using animated stimuli of agents moving in simple mazes, we assess how well different inverse planning models based on different goal priors can predict human goal inferences. The results provide quantitative evidence for an approximately rational inference mechanism in human goal inference within our simplified stimulus paradigm, and for the flexible nature of goal representations that human observers can adopt. We discuss the implications of our experimental results for human action understanding in real-world contexts, and suggest how our framework might be extended to capture other kinds of mental state inferences, such as inferences about beliefs, or inferring whether an entity is an intentional agent.
人类善于推断其他主体行为背后的心理状态,如目标、信念、欲望、情感及其他想法。我们提出了一种基于贝叶斯逆规划的计算框架,用于对人类的行动理解进行建模。该框架基于合理性原则,代表了一种关于意向性主体行为的直观理论:即期望主体在给定其对世界的信念的情况下,会进行大致合理的规划以实现其目标。通过使用贝叶斯推理对这种合理规划模型进行反向推导,将观察到的行动的可能性与心理状态的先验概率相结合,从而推断出导致主体行为的心理状态。这种方法以精确的概率术语形式化了先前基于“意向立场”[丹尼特,D. C.(1987年)。《意向立场》。马萨诸塞州剑桥:麻省理工学院出版社]或“目的论立场”[杰尔杰利,G.,纳达斯迪,Z.,齐布拉,G.,&比罗,S.(1995年)。12个月大时采取意向立场。《认知》,56,165 - 193]的定性行动理解方法的本质。在三个使用主体在简单迷宫中移动的动画刺激的心理物理学实验中,我们评估了基于不同目标先验概率的不同逆规划模型对人类目标推断的预测能力。结果为我们简化的刺激范式内人类目标推断中近似合理的推理机制,以及人类观察者可采用的目标表征的灵活性提供了定量证据。我们讨论了实验结果对现实世界背景下人类行动理解的意义,并提出了如何扩展我们的框架以捕捉其他类型的心理状态推断,如对信念的推断,或推断一个实体是否为意向性主体。