Independent component analysis (ICA) is becoming an increasingly important tool for analyzing large data sets. In essence, ICA separates an observed set of signal mixtures into a set of statistically independent component signals, or source signals. In so doing, this powerful method can extract the relatively small amount of useful information typically found in large data sets. The applications for ICA range from speech processing, brain imaging, and electrical brain signals to telecommunications and stock predictions.In Independent Component Analysis, Jim Stone presents the essentials of ICA and related techniques (projection pursuit and complexity pursuit) in a tutorial style, using intuitive examples described in simple geometric terms. The treatment fills the need for a basic primer on ICA that can be used by readers of varying levels of mathematical sophistication, including engineers, cognitive scientists, and neuroscientists who need to know the essentials of this evolving method.An overview establishes the strategy implicit in ICA in terms of its essentially physical underpinnings and describes how ICA is based on the key observations that different physical processes generate outputs that are statistically independent of each other. The book then describes what Stone calls "the mathematical nuts and bolts" of how ICA works. Presenting only essential mathematical proofs, Stone guides the reader through an exploration of the fundamental characteristics of ICA.Topics covered include the geometry of mixing and unmixing; methods for blind source separation; and applications of ICA, including voice mixtures, EEG, fMRI, and fetal heart monitoring. The appendixes provide a vector matrix tutorial, plus basic demonstration computer code that allows the reader to see how each mathematical method described in the text translates into working Matlab computer code.
Author(s): James V. Stone
Year: 2004
Language: English
Pages: 200
Contents......Page 8
Preface......Page 12
Acknowledgments......Page 14
Abbreviations......Page 16
Mathematical Symbols......Page 18
I INDEPENDENT COMPONENT ANALYSIS AND BLIND SOURCE SEPARATION......Page 20
1 Overview of Independent Component Analysis......Page 24
2 Strategies for Blind Source Separation......Page 32
II THE GEOMETRY OF MIXTURES......Page 38
3 Mixing and Unmixing......Page 40
4 Unmixing Using the Inner Product......Page 50
5 Independence and Probability Density Functions......Page 70
III METHODS FOR BLIND SOURCE SEPARATION......Page 88
6 Projection Pursuit......Page 90
7 Independent Component Analysis......Page 98
8 Complexity Pursuit......Page 130
9 Gradient Ascent......Page 138
10 Principal Component Analysis and Factor Analysis......Page 148
IVAPPLICATIONS......Page 156
11 Applications of ICA......Page 158
VAPPENDICES......Page 168
A A Vector Matrix Tutorial......Page 170
B Projection Pursuit Gradient Ascent......Page 176
C Projection Pursuit: Stepwise Separation of Sources......Page 182
D ICA Gradient Ascent......Page 184
E Complexity Pursuit Gradient Ascent......Page 192
F Principal Component Analysis for Preprocessing Data......Page 198
G Independent Component Analysis Resources......Page 202
H Recommended Reading......Page 204
References......Page 206
Index......Page 210