An HDP-HMM for Systems With State Persistence

Loading...
Thumbnail Image

Embargo Date

Related Collections

Degree type

Discipline

Subject

Statistics and Probability

Funder

Grant number

License

Copyright date

Distributor

Related resources

Contributor

Abstract

The hierarchical Dirichlet process hidden Markov model (HDP-HMM) is a flexible, nonparametric model which allows state spaces of unknown size to be learned from data. We demonstrate some limitations of the original HDP-HMM formulation (Teh et al., 2006), and propose a sticky extension which allows more robust learning of smoothly varying dynamics. Using DP mixtures, this formulation also allows learning of more complex, multimodal emission distributions. We further develop a sampling algorithm that employs a truncated approximation of the DP to jointly resample the full state sequence, greatly improving mixing rates. Via extensive experiments with synthetic data and the NIST speaker diarization database, we demonstrate the advantages of our sticky extension, and the utility of the HDP-HMM in real-world applications.

Advisor

Date of presentation

2008-01-01

Conference name

Statistics Papers

Conference dates

2023-05-17T15:27:31.000

Conference location

Date Range for Data Collection (Start Date)

Date Range for Data Collection (End Date)

Digital Object Identifier

Series name and number

Volume number

Issue number

Publisher

Publisher DOI

Journal Issues

Comments

Recommended citation

Collection