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An Emotional Recommender System for Music

Vincenzo Moscato, Antonio Picariello, Giancarlo Sperlí

2020IEEE Intelligent Systems106 citationsDOI

Abstract

Nowadays, recommender systems have become essential to users for finding “what they need” within large collections of items. Meanwhile, recent studies have demonstrated as user personality can effectively provide a more valuable information to significantly improve recommenders’ performance, especially considering behavioral data captured from social network logs. In this work, we describe a novel music recommendation technique based on the identification of personality traits, moods, and emotions of a single user, starting from solid psychological observations recognized by the analysis of user behavior within a social environment. In particular, users’ personality and mood have been embedded within a content-based filtering approach to obtain more accurate and dynamic results. Several experiments are then reported to show effectiveness of user personality and mood recognition recommendation, thus, encouraging research in this direction.

Topics & Concepts

Recommender systemComputer sciencePersonalityMoodIdentification (biology)Big Five personality traitsHuman–computer interactionWorld Wide WebPsychologySocial psychologyBotanyBiologyMusic and Audio ProcessingRecommender Systems and TechniquesNeuroscience and Music Perception
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