Title :
Signal Decomposition using Multiscale Admixture Models
Author :
Telgarsky, M. ; Lafferty, J.
Author_Institution :
Dept. of Machine Learning, Carnegie Mellon Univ., Pittsburgh, PA, USA
Abstract :
Admixture models are "mixtures of mixtures" that decompose an object into multiple latent components, with the component proportions varying stochastically across objects. Recent work in machine learning has successfully developed admixture models for text, and work in population genetics has developed such models to analyze complex groups of individuals having mixed ancestry. We introduce a family of graphical admixture models for decomposing a signal into multiple components based on a wavelet representation of the signal. Two models are developed, one using a fixed segmentation of the signal, another using recursive dyadic partitioning. Variational algorithms are derived for inferring mixture proportions and estimating parameters.
Keywords :
recursive estimation; signal representation; stochastic processes; variational techniques; wavelet transforms; fixed signal segmentation; graphical admixture models; machine learning; multiscale admixture models; population genetics; recursive dyadic partitioning; signal decomposition; variational algorithms; wavelet representation; Computer science; Genetics; Graphical models; Hidden Markov models; Machine learning; Partitioning algorithms; Predictive models; Signal resolution; Tree graphs; Wavelet coefficients; Graphical model; labeling; recursive dyadic partitioning; unsupervised signal segmentation; variational inference; wavelets;
Conference_Titel :
Acoustics, Speech and Signal Processing, 2007. ICASSP 2007. IEEE International Conference on
Conference_Location :
Honolulu, HI
Print_ISBN :
1-4244-0727-3
DOI :
10.1109/ICASSP.2007.366269