Dynamic nonparametric bayesian models for analysis of music
Journal Article (Journal Article)
The dynamic hierarchical Dirichlet process (dHDP) is developed to model complex sequential data, with a focus on audio signals from music. The music is represented in terms of a sequence of discrete observations, and the sequence is modeled using a hidden Markov model (HMM) with time-evolving parameters. The dHDP imposes the belief that observations that are temporally proximate are more likely to be drawn from HMMs with similar parameters, while also allowing for "innovation" associated with abrupt changes in the music texture. The sharing mechanisms of the time-evolving model are derived, and for inference a relatively simple Markov chain Monte Carlo sampler is developed. Segmentation of a given musical piece is constituted via the model inference. Detailed examples are presented on several pieces, with comparisons to other models. The dHDP results are also compared with a conventional music-theoretic analysis. All the supplemental materials used by this paper are available online. © 2010 American Statistical Association.
Full Text
Duke Authors
Cited Authors
- Ren, L; Dunson, D; Lindroth, S; Carin, L
Published Date
- June 1, 2010
Published In
Volume / Issue
- 105 / 490
Start / End Page
- 458 - 472
International Standard Serial Number (ISSN)
- 0162-1459
Digital Object Identifier (DOI)
- 10.1198/jasa.2009.ap08497
Citation Source
- Scopus