In complex environments, where the human sensory system reaches its limits, our behaviour is strongly driven by our beliefs about the state of the world around us. Accessing others' beliefs, intentions, or mental states in general, could thus allow for more effective social interactions in natural contexts. Yet these variables are not directly observable. Theory of Mind (TOM), the ability to attribute to other agents' beliefs, intentions, or mental states in general, is a crucial feature of human social interaction and has become of interest to the robotics community. Recently, new models that are able to learn TOM have been introduced. In this paper, we show the synergy between learning to predict low-level mental states, such as intentions and goals, and attributing high-level ones, such as beliefs. Assuming that learning of beliefs can take place by observing own decision and beliefs estimation processes in partially observable environments and using a simple feed-forward deep learning model, we show that when learning to predict others' intentions and actions, faster and more accurate predictions can be acquired if beliefs attribution is learnt simultaneously with action and intentions prediction. We show that the learning performance improves even when observing agents with a different decision process and is higher when observing beliefs-driven chunks of behaviour. We propose that our architectural approach can be relevant for the design of future adaptive social robots that should be able to autonomously understand and assist human partners in novel natural environments and tasks.
翻译:在人类感官系统达到极限的复杂环境中,我们的行为受到我们对周围世界状况的信念的强烈驱动。接触他人的信仰、意图或一般精神状态,可以使得自然环境中更有效的社会互动。然而,这些变量无法直接观察。心理理论(TOM)是人类社会互动的一个关键特征,并且已经引起机器人界的兴趣。最近,能够学习TOM的新模式已经引入。在本文中,我们展示了学习预测低层次精神状态(如意图和目标)和赋予高层次精神状态(如信仰)之间的协同作用。假设通过在部分可观察的环境中观察自己的决定和信仰估计过程以及使用简单的供养-向前深层次学习的模式,可以进行信仰的学习。我们表明,在学习预测他人的意图和行动时,可以更快和更加准确的预测。我们表明,即使在观察具有驱动力的自然意识的代理人时,即使我们今后的设计过程能够提出具有更高的社会意识,我们今后的建筑设计行为,我们也应该提高学习业绩。当我们观察具有驱动力的建筑设计过程时,当我们能够理解人类的建筑设计过程和更高程度时,我们就能理解人类的建筑设计过程。