Computational thematics: comparing algorithms for clustering the genres of literary fiction
Oleg Sobchuk,
Artjoms Šeļa
Abstract:What are the best methods of capturing thematic similarity between literary texts? Knowing the answer to this question would be useful for automatic clustering of book genres, or any other thematic grouping. This paper compares a variety of algorithms for unsupervised learning of thematic similarities between texts, which we call “computational thematics”. These algorithms belong to three steps of analysis: text pre-processing, extraction of text features, and measuring distances between the lists of features.… Show more
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