Abstract

Human communication is invariably executed in the form of a narrative, an account of connected events comprising characters, actions, and settings. A coherent and well-structured narrative is therefore essential for effective communication, confusion caused by a haphazard attempt at storytelling being a common experience. This also suggests that a scientific understanding of how a narrative is formed and delivered is key to understanding human communication and dialog. Here we show that the definition of a narrative lends itself naturally to network-based modeling and analysis, and they can be further enriched by incorporating various text analysis methods from computational linguistics. We model the temporally unfolding nature of narrative as a dynamical growing network of nodes and edges representing characters and interactions, which allows us to characterize the story progression using the network growth pattern. We also introduce the concept of an interaction map between characters based on associated sentiments and topics identified from the text that characterize their relationships explicitly. We demonstrate the methods via application to Victor Hugo’s Les Misérables. Going beyond simple, aggregate occurrence-based methods for narrative representation and analysis, our proposed methods show promise in uncovering its essential nature of a highly complex, dynamic system that reflects the rich structure of human interaction and communication.

Highlights

  • Recent advances in quantitative methodologies for the modeling and analyses of large-scale heterogeneous data have enabled novel understanding of various complex systems from the social, technological, and biological domains [1]

  • While the methods are formulated so that they can be applied to narratives in general, we illustrate them in this paper by applying them to Victor Hugo’s Les Miserables

  • P h j2Ca jk h k2T ;j2Ca jk where Ca is the set of chapters that character α appears in. This character–topic association can be viewed as defining the “topical state” of a character at any given point in the narrative, which we demonstrate later during the actual application of the method to Les Miserables

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Summary

Introduction

Recent advances in quantitative methodologies for the modeling and analyses of large-scale heterogeneous data have enabled novel understanding of various complex systems from the social, technological, and biological domains [1]. The field of application is rapidly expanding, including the traditional academic fields of cultural studies and humanities. It is allowing researchers to obtain novel answers to long-standing and new problems by finding.

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