Huao Li, Ini Oguntola, Dana Hughes, Michael Lewis, K. Sycara
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引用次数: 2
摘要
心理理论(Theory of Mind, ToM)是指推断他人心理状态的能力。这种能力是人类社会活动的基础,比如移情、团队合作和沟通。随着智能代理参与到不同的人类代理团队中,他们也将被期望具有社会智能,以便成为有效的团队成员。本文描述了一个观察城市搜救任务中团队行为并推断其心理状态的计算ToM模型。我们的模块化ToM模型通过使用深度神经网络(dnn)显式表示信念、信念更新和动作预测/生成来近似人类推理。为了验证我们的模型,我们将其性能与被要求做出相同推断的人类观察者的黄金标准进行比较。ToM模型在所有四项推理测试中都优于人类观察者的平均判断,并且在四项测试中的三项测试中优于90百分位观察者。虽然模块化信念和预测提供的学习偏差对于测试的简单推理是足够的,但需要大量的改进来复制在人类社会互动中观察到的复杂细致的推理链。
Theory of Mind Modeling in Search and Rescue Teams
Theory of Mind (ToM) refers to the ability to make inferences about other’s mental states. Such ability is fundamental for human social activities such as empathy, teamwork, and communication. As intelligent agents come to be involved in diverse human-agent teams, they will also be expected to be socially intelligent in order to become effective teammates. In this paper, we describe a computational ToM model which observes team behaviors and infers their mental states in a urban search and rescue (US&R) task. Our modular ToM model approximates human inference by explicitly representing beliefs, belief updates, and action prediction/generation using Deep Neural Networks (DNNs). To validate our model we compare its performance to the gold standard of human observers asked to make the same inferences. The ToM model proved superior to the average judgments of human observers on all four tests of inference and better than 90th percentile observers on three of the four. While the learning bias provided by modularizing belief and prediction proved sufficient for the simple inferences tested, substantial refinement will be needed to replicate the complex nuanced chains of inference observed in human social interaction.