Abstract

The quantitative modeling of semantic representations in the brain plays a key role in understanding the neural basis of semantic processing. Previous studies have demonstrated that word vectors, which were originally developed for use in the field of natural language processing, provide a powerful tool for such quantitative modeling. However, whether semantic representations in the brain revealed by the word vector-based models actually capture our perception of semantic information remains unclear, as there has been no study explicitly examining the behavioral correlates of the modeled brain semantic representations. To address this issue, we compared the semantic structure of nouns and adjectives in the brain estimated from word vector-based brain models with that evaluated from human behavior. The brain models were constructed using voxelwise modeling to predict the functional magnetic resonance imaging (fMRI) response to natural movies from semantic contents in each movie scene through a word vector space. The semantic dissimilarity of brain word representations was then evaluated using the brain models. Meanwhile, data on human behavior reflecting the perception of semantic dissimilarity between words were collected in psychological experiments. We found a significant correlation between brain model- and behavior-derived semantic dissimilarities of words. This finding suggests that semantic representations in the brain modeled via word vectors appropriately capture our perception of word meanings.

Highlights

  • Natural language processing is a branch of machine learning that aims to develop machines that understand the meanings of words

  • Word vectors, which have been originally developed in the field of engineering, have been extensively leveraged in neuroscience studies to model semantic representations in the human brain

  • There has been no study explicitly examining whether the brain semantic representations modeled by word vectors capture our perception of semantic information

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Summary

Introduction

Natural language processing is a branch of machine learning that aims to develop machines that understand the meanings of words. These studies have reported that word vector-based models have the ability to predict the brain response evoked by semantic perceptual experiences [10,12,13,14,15,16] These models are able to recover perceived semantic contents from brain response [11,17,18]. No study has yet identified the behavioral correlates of the modeled brain semantic representations This clarification is important in order to establish the brain modeling with word vectors as an accurate methodology for investigating human semantic processing

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