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Classification analysis of Kouji Uno’s novels using topic model

  • Xueqin LiuEmail author
  • Mingzhe Jin
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  • 6 Downloads

Abstract

Kouji Uno is a prominent Japanese littérateur, whose creative activity was subjected to disruption twice. Literary critics take the view that Uno’s writing style underwent changes when he resumed writing. This paper aims at revealing the partition of Uno’s creative phase using statistical methods to conduct an investigation into the stylistic characteristics of his novels. For this purpose, a topic-model was applied to classifying Uno’s novels and to comparing the characteristics of each group. As revealed by the results, Uno’s novels can be classified into three groups separated approximately by the two non-productive periods and there are different stylistic characteristics displayed by novels in each group. Moreover, one interesting observation is that his stylistic characteristics have changed even prior to the interruptions caused to writing. It is more reasonable that Uno’s writing style started to change beforethe interruptions with achievements made to some extent after the resumption.

Keywords

Kouji Uno Writing style Quantitative analysis Creative phases Topic model 

Notes

Compliance with ethical standards

Conflict of interest

On behalf of all authors, the corresponding author states that there is no conflict of interest.

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Copyright information

© The Behaviormetric Society 2019

Authors and Affiliations

  1. 1.Graduate School of Culture and Information ScienceDoshisha UniversityKyotanabeJapan
  2. 2.Faculty of Culture and Information ScienceDoshisha UniversityKyotanabeJapan

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