Department of Psychology, Yale University, New Haven, CT, USA.
Wu Tsai Institute, Yale University, New Haven, CT, USA.
Nat Commun. 2024 May 17;15(1):4183. doi: 10.1038/s41467-024-48114-6.
Revealing how the mind represents information is a longstanding goal of cognitive science. However, there is currently no framework for reconstructing the broad range of mental representations that humans possess. Here, we ask participants to indicate what they perceive in images made of random visual features in a deep neural network. We then infer associations between the semantic features of their responses and the visual features of the images. This allows us to reconstruct the mental representations of multiple visual concepts, both those supplied by participants and other concepts extrapolated from the same semantic space. We validate these reconstructions in separate participants and further generalize our approach to predict behavior for new stimuli and in a new task. Finally, we reconstruct the mental representations of individual observers and of a neural network. This framework enables a large-scale investigation of conceptual representations.
揭示思维如何表示信息是认知科学的一个长期目标。然而,目前还没有框架可以重建人类所拥有的广泛的心理表征。在这里,我们要求参与者在深度神经网络生成的随机视觉特征图像中指出他们所感知到的内容。然后,我们推断他们的反应的语义特征与图像的视觉特征之间的关联。这使我们能够重建多个视觉概念的心理表征,包括参与者提供的和从相同语义空间推断出的其他概念。我们在独立的参与者中验证这些重建,并进一步将我们的方法推广到新刺激和新任务中的行为预测。最后,我们重建个体观察者和神经网络的心理表征。该框架使对概念表示的大规模研究成为可能。