Affinity groups: A linguistic analysis for social network groups identification


Abstract:

Socially cohesive groups tend to share similar ideas and express themselves in similar ways when posting their thoughts in online social networks. Therefore, some researchers have conducted studies to uncover the issues discussed by groups who are structurally connected in a network. In this study, we take advantage of the language usage patterns present in online communication to unveil affinity groups, i.e. like-minded people, who are not necessarily interacting in the network currently. We analyze 735K tweets written by 620 unique users and compute scores for 14 grammatical categories using the linguistic inquiry word count software (LIWC). With the LIWC scores, we build a vector for each user, apply a similarity measure and feed an affinity propagation clustering algorithm to find the affinity groups. Following the proposed method, clusters of religious activists, journalists, entrepreneurs, among others emerge. We automatically characterize each cluster using a topic modeling algorithm and validate the generated topics with a user study conducted with 200 people. As a result, more than 70% of the participants agreed on their selection. These results confirm that communities share certain similarities in the use of language, traits that characterize their behavior and grouping.

Año de publicación:

2017

Keywords:

  • Twitter
  • Affinity propagation clustering
  • LIWC
  • Linguistic clustering

Fuente:

scopusscopus
googlegoogle

Tipo de documento:

Conference Object

Estado:

Acceso restringido

Áreas de conocimiento:

  • Análisis de redes sociales
  • Red social

Áreas temáticas:

  • Filosofía y teoría
  • Interacción social