In this paper, we compare the effectiveness of basic acoustic features and genre annotations when adapting a music similarity model to user ratings. We use the Metric Learning to Rank algorithm to learn a Mahalanobis metric from comparative similarity ratings in in the MagnaTagATune database. Using common formats for feature data, our approach can easily be transferred to other existing databases. Our results show that genre data allow more effective learning of a metric than simple audio features, but a combination of both feature sets clearly outperforms either individual set
Subjective similarity between musical pieces and artists is an elusive concept, but one that music b...
Many tasks in music information retrieval, such as recommendation, and playlist generation for onlin...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We address the problem of estimating automatically from audio signals the similarity between two pie...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
We present first results of experiments using music similarity ratings from human participants for g...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
We observed that for multimedia data – especially music- collaborative similarity measures perform m...
Subjective similarity between musical pieces and artists is an elusive concept, but one that music b...
Many tasks in music information retrieval, such as recommendation, and playlist generation for onlin...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
Music is a complex form of communication in which both artists and cultures express their ideas and ...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We investigate a method for automatic extraction of inter-song similarity for songs selected from se...
We address the problem of estimating automatically from audio signals the similarity between two pie...
Music similarity is used in many applications ranging from music recommendations to media retrieval ...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
We present first results of experiments using music similarity ratings from human participants for g...
In this abstract, we propose a method to learn application-specific content-based metrics for music ...
We observed that for multimedia data – especially music- collaborative similarity measures perform m...
Subjective similarity between musical pieces and artists is an elusive concept, but one that music b...
Many tasks in music information retrieval, such as recommendation, and playlist generation for onlin...
Leidinio https://doi.org/10.15388/DAMSS.12.2021Nowadays the music is more accessible to us than ever...