论文标题
部分可观测时空混沌系统的无模型预测
The world seems different in a social context: a neural network analysis of human experimental data
论文作者
论文摘要
人类的看法和行为受到情境环境的影响,尤其是在社会互动期间。最近的一项研究表明,人类对视觉刺激的看法不同,具体取决于他们自己完成任务还是与机器人一起完成任务。具体而言,发现与非社会任务设置相比,社会上的核心趋势效应更强。然而,社会互动引起的这种行为变化的特殊性质及其在人脑中的潜在认知过程仍然不太了解。在本文中,我们通过训练受到上述行为数据集的预测编码理论启发的人工神经网络来解决这个问题。使用此计算模型,我们研究了人类实验中情境环境引起的行为变化是否可以通过对参数的连续修改来解释,以表达参数的强烈感觉和先前信息影响感知。我们证明,可以通过修改先验和感觉信号的精度来复制个人和社交任务设置中的人类行为数据,这表明社交和非社会任务设置实际上可能存在于连续体中。同时,对受过训练的网络的神经激活轨迹的分析提供了证据,表明信息在个人和社会条件下以根本不同的方式编码。我们的结果强调了行为数据的计算复制对于生成有关共同感知的潜在认知机制的假设的重要性,并可能为神经科学领域的后续研究提供灵感。
Human perception and behavior are affected by the situational context, in particular during social interactions. A recent study demonstrated that humans perceive visual stimuli differently depending on whether they do the task by themselves or together with a robot. Specifically, it was found that the central tendency effect is stronger in social than in non-social task settings. The particular nature of such behavioral changes induced by social interaction, and their underlying cognitive processes in the human brain are, however, still not well understood. In this paper, we address this question by training an artificial neural network inspired by the predictive coding theory on the above behavioral data set. Using this computational model, we investigate whether the change in behavior that was caused by the situational context in the human experiment could be explained by continuous modifications of a parameter expressing how strongly sensory and prior information affect perception. We demonstrate that it is possible to replicate human behavioral data in both individual and social task settings by modifying the precision of prior and sensory signals, indicating that social and non-social task settings might in fact exist on a continuum. At the same time an analysis of the neural activation traces of the trained networks provides evidence that information is coded in fundamentally different ways in the network in the individual and in the social conditions. Our results emphasize the importance of computational replications of behavioral data for generating hypotheses on the underlying cognitive mechanisms of shared perception and may provide inspiration for follow-up studies in the field of neuroscience.