Conference paper
Unveiling Music Structure Via PLSA Similarity Fusion
Nowadays there is an increasing interest in developing methods for building music recommendation systems. In order to get a satisfactory performance from such a system, one needs to incorporate as much information about songs similarity as possible; however, how to do so is not obvious. In this paper, we build on the ideas of the Probabilistic Latent Semantic Analysis (PLSA) that has been successfully used in the document retrieval community.
Under this probabilistic framework, any song will be projected into a relatively low dimensional space of "latent semantics", in such a way that that all observed similarities can be satisfactorily explained using the latent semantics. Additionally, this approach significantly simplifies the song retrieval phase, leading to a more practical system implementation.
The suitability of the PLSA model for representing music structure is studied in a simplified scenario consisting of 10.000 songs and two similarity measures among them. The results suggest that the PLSA model is a useful framework to combine different sources of information, and provides a reasonable space for song representation.
Language: | English |
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Publisher: | IEEE |
Year: | 2007 |
Pages: | 419-424 |
Proceedings: | 2007 17th IEEE Workshop on Machine Learning for Signal Processing |
ISBN: | 1424415659 , 1424415667 , 1509082603 , 9781424415656 , 9781424415663 and 9781509082605 |
ISSN: | 21610363 and 15512541 |
Types: | Conference paper |
DOI: | 10.1109/MLSP.2007.4414343 |
ORCIDs: | Hansen, Lars Kai and Larsen, Jan |
Acoustic measurements Brightness Content based retrieval Fuses Informatics Information resources Mathematical model Multiple signal classification Music information retrieval Recommender systems document retrieval information retrieval music music recommendation systems music structure probabilistic latent semantic analysis semantic networks similarity fusion song representation