Multilinear Subspace Learning: Dimensionality Reduction of Multidimensional Data Front Cover

Multilinear Subspace Learning: Dimensionality Reduction of Multidimensional Data

  • Length: 296 pages
  • Edition: 1
  • Publisher:
  • Publication Date: 2013-12-11
  • ISBN-10: 1439857245
  • ISBN-13: 9781439857243
  • Sales Rank: #3199032 (See Top 100 Books)
Description

Due to advances in sensor, storage, and networking technologies, data is being generated on a daily basis at an ever-increasing pace in a wide range of applications, including cloud computing, mobile Internet, and medical imaging. This large multidimensional data requires more efficient dimensionality reduction schemes than the traditional techniques. Addressing this need, multilinear subspace learning (MSL) reduces the dimensionality of big data directly from its natural multidimensional representation, a tensor.

Multilinear Subspace Learning: Dimensionality Reduction of Multidimensional Data gives a comprehensive introduction to both theoretical and practical aspects of MSL for the dimensionality reduction of multidimensional data based on tensors. It covers the fundamentals, algorithms, and applications of MSL.

Emphasizing essential concepts and system-level perspectives, the authors provide a foundation for solving many of today’s most interesting and challenging problems in big multidimensional data processing. They trace the history of MSL, detail recent advances, and explore future developments and emerging applications.

The book follows a unifying MSL framework formulation to systematically derive representative MSL algorithms. It describes various applications of the algorithms, along with their pseudocode. Implementation tips help practitioners in further development, evaluation, and application. The book also provides researchers with useful theoretical information on big multidimensional data in machine learning and pattern recognition. MATLAB® source code, data, and other materials are available at www.comp.hkbu.edu.hk/~haiping/MSL.html

Table of Contents

Chapter 1. Introduction

Part I: Fundamentals and Foundations
Chapter 2. Linear Subspace Learning for Dimensionality Reduction
Chapter 3. Fundamentals of Multilinear Subspace Learning
Chapter 4. Overview of Multilinear Subspace Learning
Chapter 5. Algorithmic and Computational Aspects

Part II: Algorithms and Applications
Chapter 6. Multilinear Principal Component Analysis
Chapter 7. Multilinear Discriminant Analysis
Chapter 8. Multilinear ICA, CCA, and PLS
Chapter 9. Applications of Multilinear Subspace Learning

Appendix A: Mathematical Background
Appendix B: Data and Preprocessing
Appendix C: Software

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