Effects of Behavioral Complexity on Intention Attribution to Robots

Yuto Imamura, K. Terada, Hideyuki Takahashi
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引用次数: 6

Abstract

Researchers in artificial intelligence and robotics have long debated whether robots are capable of possessing minds. We hypothesize that the mind is an abstract internal representation of an agent's input-output relationships, acquired through evolution to interact with others in a non-zero-sum game environment. Attributing mental states to others, based on their complex behaviors, enables an agent to understand another agent's current behavior and predict its future behavior. Therefore, behavioral complexity, i.e., complex sensory input and motor output, might be an essential cue in attributing abstract mental states to others. To test this theory, we conducted experiments in which participants were asked to control a robot that exhibits either simple or complex input-output relationships in its behavior to achieve goals by pushing a button switch on a remote control device. We then measured participants' subjective impressions of the robot after a sudden change in the mapping between the button switch and motor output during the goal-oriented task. The results indicate that the complex relationship between inputs and a robot's behavioral output requires greater abstraction and induces humans to attribute mental states to the robot in contrast to a simple relationship scenario.
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行为复杂性对机器人意图归因的影响
人工智能和机器人领域的研究人员长期以来一直在争论机器人是否能够拥有思想。我们假设心智是代理人输入输出关系的抽象内部表征,是通过进化而获得的,在非零和游戏环境中与他人互动。基于他人的复杂行为,将心理状态归因于他人,使一个主体能够理解另一个主体当前的行为,并预测其未来的行为。因此,行为复杂性,即复杂的感觉输入和运动输出,可能是将抽象心理状态归因于他人的重要线索。为了验证这一理论,我们进行了实验,在实验中,参与者被要求控制一个机器人,该机器人在其行为中表现出简单或复杂的输入-输出关系,通过按遥控器上的按钮开关来实现目标。然后,在目标导向任务中,当按钮开关和马达输出之间的映射发生突然变化时,我们测量了参与者对机器人的主观印象。结果表明,与简单的关系场景相比,输入和机器人行为输出之间的复杂关系需要更多的抽象,并诱导人类将心理状态归因于机器人。
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