Analysis of Online User Behaviour for Art and Culture Events

  • Behnam Rahdari
  • Tahereh Arabghalizi
  • Marco Brambilla
Conference paper
Part of the Lecture Notes in Computer Science book series (LNCS, volume 10410)

Abstract

Nowadays people share everything on online social networks, from daily life stories to the latest local and global news and events. Many researchers have exploited this as a source for understanding the user behaviour and profile in various settings. In this paper, we address the specific problem of user behavioural profiling in the context of cultural and artistic events. We propose a specific analysis pipeline that aims at examining the profile of online users, based on the textual content they published online. The pipeline covers the following aspects: data extraction and enrichment, topic modeling, user clustering, and prediction of interest. We show our approach at work for the monitoring of participation to a large-scale artistic installation that collected more than 1.5 million visitors in just two weeks (namely The Floating Piers, by Christo and Jeanne-Claude). We report our findings and discuss the pros and cons of the work.

Keywords

Social media Big data Behaviour analysis Data mining 

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Copyright information

© IFIP International Federation for Information Processing 2017

Authors and Affiliations

  • Behnam Rahdari
    • 1
  • Tahereh Arabghalizi
    • 1
  • Marco Brambilla
    • 1
  1. 1.Politecnico di MilanoMilanoItaly

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