A probabilistic theory of pattern recognition
Work detail
Pattern recognition presents one of the most significant challenges for scientists and engineers, and many different approaches have been proposed. The aim of this book is to provide a self-contained account of probabilistic analysis of these approaches. The book includes a discussion of distance measures, nonparametric methods based on kernels or nearest neighbors, Vapnik-Chervonenkis theory, epsilon entropy, parametric classification, error estimation, free classifiers, and neural networks. Wherever possible, distribution-free properties and inequalities are derived. A substantial portion of the results or the analysis is new. Over 430 problems and exercises complement the material.
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Contributors
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- Open Author
Gabor Lugosi
- Open Author
László Györfi
- Open Author
Laszlo Györfi
- Open Author
Luc Devroye
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- Image source: Open LibraryAP
A Probabilistic Theory of Pattern Recognition
- Image source: Open LibraryAP
A Probabilistic Theory of Pattern Recognition
- Image source: Open LibraryAP
A probabilistic theory of pattern recognition
- PTProbabilistic Theory of Pattern...Luc Devroye, Laszlo Györfi, Gabor Lugosi
Probabilistic Theory of Pattern Recognition