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Trial-by-trial surprise-decoding model for visual and auditory binary oddball tasks

机译:用于视觉和听觉二进制奇数任务的试用逐次出现故障解码模型

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摘要

Having to survive in a continuously changing environment has driven the human brain to actively predict the future state of its surroundings. Oddball tasks are specific types of experiments in which this nature of the human brain is studied. Detailed mathematical models have been constructed to explain the brain's perception in these tasks. These models consider a subject as an ideal observer who abstracts a hypothesis from the previous stimuli, and estimates its hyper-parameters - in order to make the next prediction. The corresponding prediction error is assumed to manifest the subjective surprise of the brain. While the approach of earlier works to this problem has been to suggest an encoding model, we investigated the reverse model: if the stimuli's surprise is assumed as the cause of the observer's surprise, it must be possible to decode the surprise of each stimulus, for every single subject, given only their neural responses, i.e. to tell how unexpected a specific stimulus has been for them. Employing machine learning tools, we developed a surprise decoding model for binary oddball tasks. We constructed our model using the ideal observer proposed by Meyniel et al. in 2016, and applied it to three datasets, one with visual, one with auditory, and one with both visual and auditory stimuli. We demonstrated that our decoding model performs very well for both of the sensory modalities with or without the presence of the subject's motor response.
机译:在不断变化的环境中必须生存,使人类的大脑能够积极预测周围环境的未来状态。奇怪的任务是特定类型的实验,其中研究了人脑的性质。已经建立了详细的数学模型来解释大脑对这些任务的看法。这些模型将一个受试者视为一个理想的观察者,他们从先前的刺激摘要假设,并估计其超参数 - 为了使下一个预测。假设相应的预测误差表现出大脑的主观惊喜。虽然前面的方法对此问题的方法来说是建议编码模型,但我们调查了反向模型:如果刺激的惊喜被认为是观察者惊喜的原因,必须可以解码每个刺激的惊喜,因为每一个主题只给出他们的神经响应,即表示特定刺激的意外是多么的意外。采用机器学习工具,我们为二元奇怪的任务开发了一个惊喜解码模型。我们使用Meniel等人提出的理想观察者构建了我们的模型。在2016年,并将其应用于三个数据集,一个与视觉,一个有听觉,一个视觉和听觉刺激。我们证明,我们的解码模型对于有或没有受试者的电动机响应的存在,对感觉方式的两种感觉方式表现得非常好。

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