Recommender Systems provide suggestions for items (e.g., movies or songs) to be of use to a user. They must take into account information to deliver more useful (perceived) recommendations. Current music recommender takes an initial input of a song and plays music with similar characteristics, or music that other users have listened to along with the input song. Listening behaviors in terms of temporal information associated to ratings or playbacks are usually ignored. We propose a recommender that predicts the most rated songs that a given user is likely to play in the future analyzing and comparing user listening habits by means of signal processing techniques.
Gasparetti, F., Biancalana, C., Micarelli, A., Miola, A., Sansonetti, G. (2012). Wavelet-based Music Recommendation. In Proceedings of the 8th International Conference on Web Information Systems and Technologies (pp.399-402) [10.5220/0003940903990402].
Wavelet-based Music Recommendation
GASPARETTI, FABIO;BIANCALANA, CLAUDIO;MICARELLI, Alessandro;MIOLA, Alfonso;SANSONETTI, GIUSEPPE
2012-01-01
Abstract
Recommender Systems provide suggestions for items (e.g., movies or songs) to be of use to a user. They must take into account information to deliver more useful (perceived) recommendations. Current music recommender takes an initial input of a song and plays music with similar characteristics, or music that other users have listened to along with the input song. Listening behaviors in terms of temporal information associated to ratings or playbacks are usually ignored. We propose a recommender that predicts the most rated songs that a given user is likely to play in the future analyzing and comparing user listening habits by means of signal processing techniques.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.