img Leseprobe Leseprobe

Feature Learning and Understanding

Algorithms and Applications

Zhihui Lai, Henry Leung, Haitao Zhao, et al.

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Springer International Publishing img Link Publisher

Naturwissenschaften, Medizin, Informatik, Technik / Theoretische Physik

Beschreibung

This book covers the essential concepts and strategies within traditional and cutting-edge feature learning methods thru both theoretical analysis and case studies. Good features give good models and it is usually not classifiers but features that determine the effectiveness of a model. In this book, readers can find not only traditional feature learning methods, such as principal component analysis, linear discriminant analysis, and geometrical-structure-based methods, but also advanced feature learning methods, such as sparse learning, low-rank decomposition, tensor-based feature extraction, and deep-learning-based feature learning. Each feature learning method has its own dedicated chapter that explains how it is theoretically derived and shows how it is implemented for real-world applications. Detailed illustrated figures are included for better understanding. This book can be used by students, researchers, and engineers looking for a reference guide for popular methods of feature learning and machine intelligence.


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Schlagwörter

data-driven science, modeling and theory building, data analysis, feature engineering, machine intelligence, principal component analysis, sparse learning, feature learning, machine learning, tensor-based feature extraction, semantic feature learning, pattern recognition, low rank decomposition, linear discriminant analysis