CONF
paiement:mbc:2007/IDIAP
A Generative Model for Rhythms
Paiement, Jean-François
Grandvalet, Yves
Bengio, Samy
Eck, Douglas
EXTERNAL
https://publications.idiap.ch/attachments/papers/2007/paiement-mbc-2007.pdf
PUBLIC
https://publications.idiap.ch/index.php/publications/showcite/paiement:rr07-70
Related documents
NIPS Workshop on Brain, Music and Cognition
2007
IDIAP-RR 07-70
Modeling music involves capturing long-term dependencies in time series, which has proved very difficult to achieve with traditional statistical methods. The same problem occurs when only considering rhythms. In this paper, we introduce a generative model for rhythms based on the distributions of distances between subsequences. A specific implementation of the model when considering Hamming distances over a simple rhythm representation is described. The proposed model consistently outperforms a standard Hidden Markov Model in terms of conditional prediction accuracy on two different music databases.
REPORT
paiement:rr07-70/IDIAP
A Generative Model for Rhythms
Paiement, Jean-François
Grandvalet, Yves
Bengio, Samy
Eck, Douglas
EXTERNAL
https://publications.idiap.ch/attachments/reports/2007/paiement-idiap-rr-07-70.pdf
PUBLIC
Idiap-RR-70-2007
2007
IDIAP
Published in Music, Brain, and Cognition workshop, NIPS 2007.
Modeling music involves capturing long-term dependencies in time series, which has proved very difficult to achieve with traditional statistical methods. The same problem occurs when only considering rhythms. In this paper, we introduce a generative model for rhythms based on the distributions of distances between subsequences. A specific implementation of the model when considering Hamming distances over a simple rhythm representation is described. The proposed model consistently outperforms a standard Hidden Markov Model in terms of conditional prediction accuracy on two different music databases.