JSAI2020

Presentation information

General Session

General Session » J-9 Natural language processing, information retrieval

[3Q1-GS-9] Natural language processing, information retrieval: Context analysis

Thu. Jun 11, 2020 9:00 AM - 10:40 AM Room Q (jsai2020online-17)

座長:森田武史(青山学院大学)

9:00 AM - 9:20 AM

[3Q1-GS-9-01] Estimating impression and preference from sentences using distributed word representations incorporated with brain information

〇Satoshi Nishida1, Yusuke Nakano1, Antoine Blanc1, Naoya Maeda2, Masataka Kado2, Shinji Nishimoto1 (1. National Institute of Information and Communications Technology, 2. NTT DATA Corporation)

Keywords:Natural Language Processing, Word Distributed Representations, Word2vec, Brain, Cognition

Distributed word representations in natural language processing have been used to estimate cognitive information from sentences (e.g., sentiment analysis). However, such estimation is difficult for highly subjective contents. We here propose a new technique that improves the performance in such estimation by incorporating human brain information into distributed word representations. In this technique, distributed representations, of given sentences, transformed into brain-activity representations are used to estimate the cognitive information linked with the sentences. To verify our technique, we obtained distributed word representations from a text corpus via word2vec, and modeled the transformation of the distributed representations into brain-activity representations using movie-evoked brain activity measured with functional MRI. We then applied our technique to the estimation of impression and preference for movie scenes from manual descriptions for the same scenes. We found that the performance of these estimations was higher when we used brain-activity representations transformed from distributed representations than when we used the distributed representations directly. This result suggests that distributed word representations can be improved by incorporating human brain information into them.

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