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Adaptive filter theory

Examines both the mathematical theory behind various linear adaptive filters with finite-duration impulse response and the elements of supervised neural networks. The fourth edition of this book has been updated and refined to stay current with the field.
Print Book, English, ©2002
Prentice Hall, Upper Saddle River, N.J., ©2002
xvi, 920 pages : illustrations ; 24 cm
9780130901262, 0130901261
301065220
Background and Overview.  1. Stochastic Processes and Models.  2. Wiener Filters.  3. Linear Prediction.  4. Method of Steepest Descent.  5. Least-Mean-Square Adaptive Filters.  6. Normalized Least-Mean-Square Adaptive Filters.  7. Transform-Domain and Sub-Band Adaptive Filters.  8. Method of Least Squares.  9. Recursive Least-Square Adaptive Filters. 10. Kalman Filters as the Unifying Bases for RLS Filters. 11. Square-Root Adaptive Filters. 12. Order-Recursive Adaptive Filters. 13. Finite-Precision Effects. 14. Tracking of Time-Varying Systems. 15. Adaptive Filters Using Infinite-Duration Impulse Response Structures. 16. Blind Deconvolution. 17. Back-Propagation Learning. Epilogue. Appendix A. Complex Variables. Appendix B. Differentiation with Respect to a Vector. Appendix C. Method of Lagrange Multipliers. Appendix D. Estimation Theory. Appendix E. Eigenanalysis. Appendix F. Rotations and Reflections. Appendix G. Complex Wishart Distribution. Glossary. Abbreviations. Principal Symbols. Bibliography. Index.