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Multivariate Bayesian Statistics: Models for Source Separation and Signal Unmixing
 
 
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Multivariate Bayesian Statistics: Models for Source Separation and Signal Unmixing [Hardcover]

Daniel B. Rowe (Author)

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Book Description

1584883189 978-1584883180 November 25, 2002 1
Of the two primary approaches to the classic source separation problem, only one does not impose potentially unreasonable model and likelihood constraints: the Bayesian statistical approach. Bayesian methods incorporate the available information regarding the model parameters and not only allow estimation of the sources and mixing coefficients, but also allow inferences to be drawn from them.

Multivariate Bayesian Statistics: Models for Source Separation and Signal Unmixing offers a thorough, self-contained treatment of the source separation problem. After an introduction to the problem using the "cocktail-party" analogy, Part I provides the statistical background needed for the Bayesian source separation model. Part II considers the instantaneous constant mixing models, where the observed vectors and unobserved sources are independent over time but allowed to be dependent within each vector. Part III details more general models in which sources can be delayed, mixing coefficients can change over time, and observation and source vectors can be correlated over time. For each model discussed, the author gives two distinct ways to estimate the parameters.

Real-world source separation problems, encountered in disciplines from engineering and computer science to economics and image processing, are more difficult than they appear. This book furnishes the fundamental statistical material and up-to-date research results that enable readers to understand and apply Bayesian methods to help solve the many "cocktail party" problems they may confront in practice.

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More About the Author

Dr. Rowe is an Asociate Professor in the Department of Mathematics, Statistics, and Computer Science at Marquette University. He teaches one of the core courses in the Computaional Sciences PhD program. This is a program in modern mathematics using computers. Before Joining Marquette University, he was an Associate Professor in the Department of Biophysics at the Medical College of Wisconsin. Dr. Rowe's research is in the precise modeling and analysis of functional magnetic resonance imaging experiments.


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Inside This Book (learn more)
First Sentence:
The Source Separation model will be easier to explain if the mechanics of a "cocktail party" are first described. Read the first page
Key Phrases - Statistically Improbable Phrases (SIPs): (learn more)
posteriori variance estimates, posteriori parameter estimates, observed mixed signals, unobserved source vectors, posterior conditional mean, first random variates, joint posterior modal, marginal posterior variance, constant mixing process, modal variance, substantive field expert, computing marginal distributions, posterior conditional distribution, hyperparameter assessment, marginal posterior mean, conditional posterior distribution, unobservable sources, joint posterior distribution, parameterize the distribution, posterior mean estimates, simultaneous hypotheses, joint prior distribution, marginal posterior distribution, statistically significant activation, vague prior distribution
Key Phrases - Capitalized Phrases (CAPs): (learn more)
Inverted Wishart, Matrix Normal, Arg Max, Scalar Normal, Factor Analysis, Multivariate Bayesian Statistics, Bayesian Source Separation, Bayesian Regression, Scalar Student, Inverted Gamma, Matrix Student T-distribution, Case Study, Multivariate Regression, Scalar Wishart, Scalar Beta, Posterior Conditionals Both the Gibbs, Aig Max, Discussion Returning, Inverse Wishart, Multivariate Statistics
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