Source Separation and Machine Learning
- Length: 384 pages
- Edition: 1
- Language: English
- Publisher: Academic Press
- Publication Date: 2018-11-06
- ISBN-10: 0128177969
- ISBN-13: 9780128177969
- Sales Rank: #4619851 (See Top 100 Books)
Source Separation and Machine Learning presents the fundamentals in adaptive learning algorithms for Blind Source Separation (BSS) and emphasizes the importance of machine learning perspectives. It illustrates how BSS problems are tackled through adaptive learning algorithms and model-based approaches using the latest information on mixture signals to build a BSS model that is seen as a statistical model for a whole system. Looking at different models, including independent component analysis (ICA), nonnegative matrix factorization (NMF), nonnegative tensor factorization (NTF), and deep neural network (DNN), the book addresses how they have evolved to deal with multichannel and single-channel source separation.
- Emphasizes the modern model-based Blind Source Separation (BSS) which closely connects the latest research topics of BSS and Machine Learning
- Includes coverage of Bayesian learning, sparse learning, online learning, discriminative learning and deep learning
- Presents a number of case studies of model-based BSS (categorizing them into four modern models – ICA, NMF, NTF and DNN), using a variety of learning algorithms that provide solutions for the construction of BSS systems
Table of Contents
Part 1: Fundamental Theories
Chapter 1 Introduction
Chapter 2 Model-Based Source Separation
Chapter 3 Adaptive Learning Machine
Part 2: Advanced Studies
Chapter 4 Independent Component Analysis
Chapter 5 Nonnegative Matrix Factorization
Chapter 6 Nonnegative Tensor Factorization
Chapter 7 Deep Neural Network
Chapter 8 Summary And Future Trends
APPENDIX A Basic Formulas
APPENDIX B Probabilistic Distribution Functions