Corpus ID: 5153267

Relating Personality Types with User Preferences in Multiple Entertainment Domains

@inproceedings{Cantador2013RelatingPT,
  title={Relating Personality Types with User Preferences in Multiple Entertainment Domains},
  author={Iv{\'a}n Cantador and Ignacio Fern{\'a}ndez-Tob{\'i}as and Alejandro Bellog{\'i}n},
  booktitle={UMAP Workshops},
  year={2013}
}
We present a preliminary study on the relations between personality types and user preferences in multiple entertainment domains, namely movies, TV shows, music, and books. We analyze a total of 53,226 Facebook user profiles composed of both personality scores (openness, conscientiousness, extraversion, agreeableness, neuroticism) from the Five Factor model, and explicit interests about 16 genres in each of the above domains. As a result of our analysis, we extract personality-based user… Expand
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