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Rowe, D.B. (2003). Multivariate Bayesian Statistics: Models for Source Separation and Signal Unmixing. CRC Press, Boca Raton, FL, USA. ISBN: 1584883189. List price $79.95.
Annotation
Using a Bayesian approach, this book addresses the blind source separation problem important in diverse applications from areas such as acoustics, genetics, portfolio allocation, and signal processing. It provides all the background needed, then examines the instantaneous constant mixing model where both the observed vectors and unobserved sources are independent over time but can be dependent within each vector. The author presents two distinct ways of estimating parameter for each model and includes MATLAB code for each model discussed.
Table of Contents
Introduction
The Cocktail Party
The Source Separation Model
Part l: FUNDAMENTALS
STATISTICAL DISTRIBUTIONS
Scalar Distributions
Binomial
Beta
Normal
Gamma and Scalar Wishart
Inverted Gamma and Scalar Inverted Wishart
Student t
F Distribution
Vector Distributions
Multivariate Normal
Multivariate Student t
Matrix Distributions
Matrix Normal
Wishart
Inverted Wishart
Matrix T
INTRODUCTORY BAYESIAN STATISTICS
Discrete Scalar Variables
Continuous Scalar Variables
Continuous Vector Variables
Continuous Matrix Variables
PRIOR DISTRIBUTIONS
Vague Priors
Scalar Variates
Vector Variates
Matrix Variates
Conjugate Priors
Scalar Variates
Vector Variates
Matrix Variates
Generalized Priors
Scalar Variates
Vector Variates
Matrix Variates
Correlation Priors
Intraclass
Markov
HYPERPARAMETER ASSESSMENT
Introduction
Binomial Likelihood
Scalar Beta
Scalar Normal Likelihood
Scalar Normal
Inverted Gamma or Scalar Inverted Wishart
Multivariate Normal Likelihood
Multivariate Normal
Inverted Wishart
Matrix Normal Likelihood
Matrix Normal
Inverted Wishart
BAYESIAN ESTIMATION METHODS
Marginal Posterior Mean
Matrix Integration
Gibbs Sampling
Gibbs Sampling Convergence
Normal Variate Generation
Wishart and Inverted Wishart Variate Generation
Factorization
Rejection Sampling
Maximum a Posteriori
Matrix Differentiation
Iterated Conditional Modes (ICM)
Advantages of ICM over Gibbs Sampling
Advantages of Gibbs Sampling over ICM
REGRESSION
Introduction
Normal Samples
Simple Linear Regression
Multiple Linear Regression
Multivariate Linear Regression
Part II: II Models
BAYESIAN REGRESSION (Multivariate)
Introduction
The Bayesian Regression Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
BAYESIAN FACTOR ANALYSIS
Introduction
The Bayesian Factor Analysis Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
BAYESIAN SOURCE SEPARATION
Introduction
Source Separation Model
Source Separation Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
UNOBSERVABLE AND OBSERVABLE SOURCE SEPARATION
Introduction
Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
FMRI CASE STUDY
Introduction
Model
Priors and Posterior
Estimation and Inference
Simulated FMRI Experiment
Real FMRI Experiment
FMRI Conclusion
Part III: Generalizations
DELAYED SOURCES AND DYNAMIC COEFFICIENTS
Introduction
Model
Delayed Constant Mixing
Delayed Nonconstant Mixing
Instantaneous Nonconstant Mixing
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
CORRELATED OBSERVATION AND SOURCE VECTORS
Introduction
Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Posterior Conditionals
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
CONCLUSION
Appendix A FMRI Activation Determination
Appendix B FMRI Hyperparameter Assessment
Bibliography
Index
Link to Matlab programs and Data Sets
**broken link removed**
Rowe, D.B. (2003). Multivariate Bayesian Statistics: Models for Source Separation and Signal Unmixing. CRC Press, Boca Raton, FL, USA. ISBN: 1584883189. List price $79.95.
Annotation
Using a Bayesian approach, this book addresses the blind source separation problem important in diverse applications from areas such as acoustics, genetics, portfolio allocation, and signal processing. It provides all the background needed, then examines the instantaneous constant mixing model where both the observed vectors and unobserved sources are independent over time but can be dependent within each vector. The author presents two distinct ways of estimating parameter for each model and includes MATLAB code for each model discussed.
Table of Contents
Introduction
The Cocktail Party
The Source Separation Model
Part l: FUNDAMENTALS
STATISTICAL DISTRIBUTIONS
Scalar Distributions
Binomial
Beta
Normal
Gamma and Scalar Wishart
Inverted Gamma and Scalar Inverted Wishart
Student t
F Distribution
Vector Distributions
Multivariate Normal
Multivariate Student t
Matrix Distributions
Matrix Normal
Wishart
Inverted Wishart
Matrix T
INTRODUCTORY BAYESIAN STATISTICS
Discrete Scalar Variables
Continuous Scalar Variables
Continuous Vector Variables
Continuous Matrix Variables
PRIOR DISTRIBUTIONS
Vague Priors
Scalar Variates
Vector Variates
Matrix Variates
Conjugate Priors
Scalar Variates
Vector Variates
Matrix Variates
Generalized Priors
Scalar Variates
Vector Variates
Matrix Variates
Correlation Priors
Intraclass
Markov
HYPERPARAMETER ASSESSMENT
Introduction
Binomial Likelihood
Scalar Beta
Scalar Normal Likelihood
Scalar Normal
Inverted Gamma or Scalar Inverted Wishart
Multivariate Normal Likelihood
Multivariate Normal
Inverted Wishart
Matrix Normal Likelihood
Matrix Normal
Inverted Wishart
BAYESIAN ESTIMATION METHODS
Marginal Posterior Mean
Matrix Integration
Gibbs Sampling
Gibbs Sampling Convergence
Normal Variate Generation
Wishart and Inverted Wishart Variate Generation
Factorization
Rejection Sampling
Maximum a Posteriori
Matrix Differentiation
Iterated Conditional Modes (ICM)
Advantages of ICM over Gibbs Sampling
Advantages of Gibbs Sampling over ICM
REGRESSION
Introduction
Normal Samples
Simple Linear Regression
Multiple Linear Regression
Multivariate Linear Regression
Part II: II Models
BAYESIAN REGRESSION (Multivariate)
Introduction
The Bayesian Regression Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
BAYESIAN FACTOR ANALYSIS
Introduction
The Bayesian Factor Analysis Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
BAYESIAN SOURCE SEPARATION
Introduction
Source Separation Model
Source Separation Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
UNOBSERVABLE AND OBSERVABLE SOURCE SEPARATION
Introduction
Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
FMRI CASE STUDY
Introduction
Model
Priors and Posterior
Estimation and Inference
Simulated FMRI Experiment
Real FMRI Experiment
FMRI Conclusion
Part III: Generalizations
DELAYED SOURCES AND DYNAMIC COEFFICIENTS
Introduction
Model
Delayed Constant Mixing
Delayed Nonconstant Mixing
Instantaneous Nonconstant Mixing
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
CORRELATED OBSERVATION AND SOURCE VECTORS
Introduction
Model
Likelihood
Conjugate Priors and Posterior
Conjugate Estimation and Inference
Posterior Conditionals
Generalized Priors and Posterior
Generalized Estimation and Inference
Interpretation
Discussion
CONCLUSION
Appendix A FMRI Activation Determination
Appendix B FMRI Hyperparameter Assessment
Bibliography
Index
Link to Matlab programs and Data Sets
**broken link removed**