Extraction and Analysis of Fictional Character Networks

Author:

Labatut Vincent1ORCID,Bost Xavier2ORCID

Affiliation:

1. Laboratoire Informatique d’Avignon -- LIA EA 4128, France

2. Orkis and Laboratoire Informatique d’Avignon -- LIA EA 4128, France

Abstract

A character network is a graph extracted from a narrative in which vertices represent characters and edges correspond to interactions between them. A number of narrative-related problems can be addressed automatically through the analysis of character networks, such as summarization, classification, or role detection. Character networks are particularly relevant when considering works of fiction (e.g., novels, plays, movies, TV series), as their exploitation allows developing information retrieval and recommendation systems. However, works of fiction possess specific properties that make these tasks harder. This survey aims at presenting and organizing the scientific literature related to the extraction of character networks from works of fiction, as well as their analysis. We first describe the extraction process in a generic way and explain how its constituting steps are implemented in practice, depending on the medium of the narrative, the goal of the network analysis, and other factors. We then review the descriptive tools used to characterize character networks, with a focus on the way they are interpreted in this context. We illustrate the relevance of character networks by also providing a review of applications derived from their analysis. Finally, we identify the limitations of the existing approaches and the most promising perspectives.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference125 articles.

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2. R. Alberich J. Miro-Julia and F. Rossello. 2002. Marvel Universe looks almost like a real social network. Retrieved from: arXiv cond-mat.dis-nn (2002) cond--mat/0202174. http://arxiv.org/abs/cond-mat/0202174 R. Alberich J. Miro-Julia and F. Rossello. 2002. Marvel Universe looks almost like a real social network. Retrieved from: arXiv cond-mat.dis-nn (2002) cond--mat/0202174. http://arxiv.org/abs/cond-mat/0202174

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