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E-book
Author Sun, Shiliang, author

Title Multiview machine learning / Shiliang Sun, Liang Mao, Ziang Dong, Lidan Wu
Published Singapore : Springer, 2019

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Description 1 online resource (x, 149 pages) : illustrations (some color)
Contents Intro; Preface; Contents; 1 Introduction; 1.1 Background; 1.2 Definition of Multiview Machine Learning and Related Concepts; 1.3 Typical Application Fields in Artificial Intelligence; 1.4 Why Can Multiview Learning Be Useful; 1.5 Book Structure; References; 2 Multiview Semi-supervised Learning; 2.1 Introduction; 2.2 Co-training Style Methods; 2.2.1 Co-training; 2.2.2 Co-EM; 2.2.3 Robust Co-training; 2.3 Co-regularization Style Methods; 2.3.1 Co-regularization; 2.3.2 Bayesian Co-training; 2.3.3 Multiview Laplacian SVM; 2.3.4 Multiview Laplacian Twin SVM; 2.4 Other Methods; References
3 Multiview Subspace Learning3.1 Introduction; 3.2 Canonical Correlation Analysis and Related Methods; 3.2.1 Canonical Correlation Analysis; 3.2.2 Kernel Canonical Correlation Analysis; 3.2.3 Probabilistic Canonical Correlation Analysis; 3.2.4 Bayesian Canonical Correlation Analysis; 3.3 Multiview Subspace Learning with Supervision; 3.3.1 Multiview Linear Discriminant Analysis; 3.3.2 Multiview Uncorrelated Linear Discriminant Analysis; 3.3.3 Hierarchical Multiview Fisher Discriminant Analysis; 3.4 Other Methods; References; 4 Multiview Supervised Learning; 4.1 Introduction
4.2 Multiview Large Margin Classifiers4.2.1 SVM-2K; 4.2.2 Multiview Maximum Entropy Discriminant; 4.2.3 Soft Margin-Consistency-Based Multiview Maximum Entropy Discrimination; 4.3 Multiple Kernel Learning; 4.3.1 Kernel Combination; 4.3.2 Linear Combination of Kernels and Support Kernel Machine; 4.3.3 SimpleMKL; 4.4 Multiview Probabilistic Models; 4.4.1 Multiview Regularized Gaussian Processes; 4.4.2 Sparse Multiview Gaussian Processes; 4.5 Other Methods; References; 5 Multiview Clustering; 5.1 Introduction; 5.2 Multiview Spectral Clustering; 5.2.1 Co-trained Spectral Clustering
5.2.2 Co-regularized Spectral Clustering5.3 Multiview Subspace Clustering; 5.3.1 Multiview Clustering via Canonical Correlation Analysis; 5.3.2 Multiview Subspace Clustering; 5.3.3 Joint Nonnegative Matrix Factorization; 5.4 Distributed Multiview Clustering; 5.5 Multiview Clustering Ensemble; 5.6 Other Methods; References; 6 Multiview Active Learning; 6.1 Introduction; 6.2 Co-testing; 6.3 Bayesian Co-training; 6.4 Multiple-View Multiple-Learner; 6.5 Active Learning with Extremely Spare Labeled Examples; 6.6 Combining Active Learning with Semi-supervising Learning; 6.7 Other Methods
Summary This book provides a unique, in-depth discussion of multiview learning, one of the fastest developing branches in machine learning. Multiview Learning has been proved to have good theoretical underpinnings and great practical success. This book describes the models and algorithms of multiview learning in real data analysis. Incorporating multiple views to improve the generalization performance, multiview learning is also known as data fusion or data integration from multiple feature sets. This self-contained book is applicable for multi-modal learning research, and requires minimal prior knowledge of the basic concepts in the field. It is also a valuable reference resource for researchers working in the field of machine learning and also those in various application domains
Bibliography Includes bibliographical references
Notes Online resource; title from PDF title page (SpringerLink, viewed January 21, 2019)
Subject Machine learning.
Pattern recognition.
Image processing.
Data mining.
Databases.
Artificial intelligence.
Computers -- Computer Vision & Pattern Recognition.
Computers -- Computer Graphics.
Computers -- Database Management -- Data Mining.
Computers -- Database Management -- General.
Computers -- Intelligence (AI) & Semantics.
Machine learning
Form Electronic book
Author Mao, Liang, author
Dong, Ziang, author
Wu, Lidan, author
ISBN 9789811330292
9811330298
981133028X
9789811330285
9789811330308
9811330301