Mind the gap: challenges of deep learning approaches to Theory of Mind

Artificial Intelligence Review(2023)

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摘要
Theory of Mind (ToM) is an essential ability of humans to infer the mental states of others. Here we provide a coherent summary of the potential, current progress, and problems of deep learning (DL) approaches to ToM. We highlight that many current findings can be explained through shortcuts. These shortcuts arise because the tasks used to investigate ToM in deep learning systems have been too narrow. Thus, we encourage researchers to investigate ToM in complex open-ended environments. Furthermore, to inspire future DL systems we provide a concise overview of prior work done in humans. We further argue that when studying ToM with DL, the research’s main focus and contribution ought to be opening up the network’s representations. We recommend researchers to use tools from the field of interpretability of AI to study the relationship between different network components and aspects of ToM.
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关键词
Theory of Mind, Artificial intelligence, Reinforcement learning, Deep learning
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