CLAug 9, 2018

A Survey on Sentiment and Emotion Analysis for Computational Literary Studies

arXiv:1808.03137v4126 citations
Originality Synthesis-oriented
AI Analysis

It addresses the need for computational tools in literary studies, but is incremental as it synthesizes prior work without introducing new methods.

This survey tackles the problem of applying emotion and sentiment analysis to literature by reviewing existing computational methods in Digital Humanities, covering topics like plot tracking and network analysis.

Emotions are a crucial part of compelling narratives: literature tells us about people with goals, desires, passions, and intentions. Emotion analysis is part of the broader and larger field of sentiment analysis, and receives increasing attention in literary studies. In the past, the affective dimension of literature was mainly studied in the context of literary hermeneutics. However, with the emergence of the research field known as Digital Humanities (DH), some studies of emotions in a literary context have taken a computational turn. Given the fact that DH is still being formed as a field, this direction of research can be rendered relatively new. In this survey, we offer an overview of the existing body of research on emotion analysis as applied to literature. The research under review deals with a variety of topics including tracking dramatic changes of a plot development, network analysis of a literary text, and understanding the emotionality of texts, among other topics.

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