This paper presents MyMusic, a system that exploits social media sources for generating personalized music playlists. This work is based on the idea that information extracted from social networks, such as Facebook and Last.fm, might be effectively exploited for personalization tasks. Indeed, information related to music preferences of users can be easily gathered from social platforms and used to define a model of user interests. The use of social media is a very cheap and effective way to overcome the classical cold start problem of recommender systems. In this work we enriched social media-based playlists with new artists related to those the user already likes. Specifically, we compare two different enrichment techniques: the first leverages the knowledge stored on DBpedia, the structured version of Wikipedia, while the second is based on the content-based similarity between descriptions of artists. The final playlist is ranked and finally presented to the user that can listen to the songs and express her feedbacks. A prototype version of MyMusic was made available online in order to carry out a preliminary user study to evaluate the best enrichment strategy. The preliminary results encouraged keeping on this research. © 2012 Springer-Verlag.

Musto, C., Semeraro, G., Lops, P., De Gemmis, M., Narducci, F. (2012). Leveraging social media sources to generate personalized music playlists. In 13th International Conference on Electronic -Commerce and Web Technologies, EC-Web 2012 (pp.112-123). Springer Verlag [10.1007/978-3-642-32273-0_10].

Leveraging social media sources to generate personalized music playlists

NARDUCCI, FEDELUCIO
Ultimo
2012

Abstract

This paper presents MyMusic, a system that exploits social media sources for generating personalized music playlists. This work is based on the idea that information extracted from social networks, such as Facebook and Last.fm, might be effectively exploited for personalization tasks. Indeed, information related to music preferences of users can be easily gathered from social platforms and used to define a model of user interests. The use of social media is a very cheap and effective way to overcome the classical cold start problem of recommender systems. In this work we enriched social media-based playlists with new artists related to those the user already likes. Specifically, we compare two different enrichment techniques: the first leverages the knowledge stored on DBpedia, the structured version of Wikipedia, while the second is based on the content-based similarity between descriptions of artists. The final playlist is ranked and finally presented to the user that can listen to the songs and express her feedbacks. A prototype version of MyMusic was made available online in order to carry out a preliminary user study to evaluate the best enrichment strategy. The preliminary results encouraged keeping on this research. © 2012 Springer-Verlag.
abstract
DBPedia; Music Recommendation; Personalization; Social Media; Business, Management and Accounting (all); Management Information Systems; Information Systems; Business and International Management; Control and Systems Engineering; Modeling and Simulation; Information Systems and Management
English
International Conference on Electronic -Commerce and Web Technologies, EC-Web 2012 - 4/5 September
2012
13th International Conference on Electronic -Commerce and Web Technologies, EC-Web 2012
978-364232272-3
2012
123
112
123
http://www.springer.com/series/7911
none
Musto, C., Semeraro, G., Lops, P., De Gemmis, M., Narducci, F. (2012). Leveraging social media sources to generate personalized music playlists. In 13th International Conference on Electronic -Commerce and Web Technologies, EC-Web 2012 (pp.112-123). Springer Verlag [10.1007/978-3-642-32273-0_10].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/78191
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