Analysis of Correspondence Relationship between Brain Activity and Semantic Representation

K. Ozaki, S. Nishida, Shinji Nishimoto, H. Asoh, I. Kobayashi
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Abstract

It is known that primary visual cortex uses a sparse code to efficiently represent natural scenes. Based on this fact, we built up a hypothesis that the same phenomenon happens at the higher cognitive function. Here we focus on semantic representation reflecting the meaning of words in the cerebral cortex. We applied sparse coding to the matrix consisting of paired data for both brain activity evoked by visual stimuli observed while a subject is watching a video, and distributed semantic representation made from the description of the video by means of a word2vec language model. Using this method, we obtained a dictionary matrix whose bases represent the corresponding relation between brain activity and the semantic representation. We then analyzed the characteristics of each base in the dictionary matrix. As a result, we confirmed that independent perceptual units were extracted with words representing their functional meaning.
脑活动与语义表征的对应关系分析
已知初级视觉皮层使用稀疏编码来有效地表示自然场景。基于这一事实,我们建立了一个假设,即同样的现象发生在更高的认知功能上。在这里,我们关注的是在大脑皮层中反映单词含义的语义表征。我们对被试观看视频时观察到的视觉刺激引起的大脑活动配对数据矩阵进行稀疏编码,并通过word2vec语言模型对视频描述进行分布式语义表示。利用这种方法,我们得到了一个字典矩阵,它的基表示大脑活动与语义表示之间的对应关系。然后我们分析了字典矩阵中每个碱基的特征。结果,我们证实了独立的感知单元是用代表其功能意义的单词提取出来的。
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