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Analysis of Bipartite Networks in Anime Series: Textual Analysis, Topic Clustering, and Modeling

Juan Sosa, Alejandro Urrego-Lopez, Cesar Prieto

TL;DR

A new variable is introduced that quantifies the frequency with which words from a description appear in specific word clusters in a specific bipartite network that shows the relationships between users and anime, examining how the descriptions of anime influence the formation of user communities.

Abstract

This article analyzes a specific bipartite network that shows the relationships between users and anime, examining how the descriptions of anime influence the formation of user communities. In particular, we introduce a new variable that quantifies the frequency with which words from a description appear in specific word clusters. These clusters are generated from a bigram analysis derived from all descriptions in the database. This approach fully characterizes the dynamics of these communities and shows how textual content affect the cohesion and structure of the social network among anime enthusiasts. Our findings suggest that there may be significant implications for the design of recommendation systems and the enhancement of user experience on anime platforms.

Analysis of Bipartite Networks in Anime Series: Textual Analysis, Topic Clustering, and Modeling

TL;DR

A new variable is introduced that quantifies the frequency with which words from a description appear in specific word clusters in a specific bipartite network that shows the relationships between users and anime, examining how the descriptions of anime influence the formation of user communities.

Abstract

This article analyzes a specific bipartite network that shows the relationships between users and anime, examining how the descriptions of anime influence the formation of user communities. In particular, we introduce a new variable that quantifies the frequency with which words from a description appear in specific word clusters. These clusters are generated from a bigram analysis derived from all descriptions in the database. This approach fully characterizes the dynamics of these communities and shows how textual content affect the cohesion and structure of the social network among anime enthusiasts. Our findings suggest that there may be significant implications for the design of recommendation systems and the enhancement of user experience on anime platforms.

Paper Structure

This paper contains 10 sections, 6 equations, 3 figures, 5 tables.

Figures (3)

  • Figure 1: World cloud.
  • Figure 2: Skewness dispersogram plotted against the threshold.
  • Figure 3: Anime network.