DocumentCode
2005604
Title
A Bayesian Approach to Switching Linear Gaussian State-Space Models for Unsupervised Time-Series Segmentation
Author
Chiappa, Silvia
Author_Institution
Max-Planck Inst. for Biol. Cybern., Tubingen, Germany
fYear
2008
fDate
11-13 Dec. 2008
Firstpage
3
Lastpage
9
Abstract
Time-series segmentation in the fully unsupervised scenario in which the number of segment-types is a priori unknown is a fundamental problem in many applications. We propose a Bayesian approach to a segmentation model based on the switching linear Gaussian state-space model that enforces a sparse parametrization, such as to use only a small number of a priori available different dynamics to explain the data. This enables us to estimate the number of segment-types within the model, in contrast to previousnon-Bayesian approaches where training and comparing several separate models was required. As the resulting model is computationally intractable, we introduce a variational approximation where a reformulation of the problem enables the use of efficient inference algorithms.
Keywords
Gaussian distribution; mathematics computing; time series; unsupervised learning; variational techniques; sparse parametrization; switching linear Gaussian state-space models; unsupervised time-series segmentation; variational approximation; Approximation algorithms; Bayesian methods; Biological system modeling; Computational modeling; Cybernetics; Data analysis; Finance; Inference algorithms; Machine learning; Speech processing;
fLanguage
English
Publisher
ieee
Conference_Titel
Machine Learning and Applications, 2008. ICMLA '08. Seventh International Conference on
Conference_Location
San Diego, CA
Print_ISBN
978-0-7695-3495-4
Type
conf
DOI
10.1109/ICMLA.2008.109
Filename
4724948
Link To Document