Advances in Learning Theory: Methods, Models and Applications

Free Download

Authors:

Series: Nato Science Series. Series III, Computer and Systems Sciences, V. 190

ISBN: 1586033417, 9781586033415, 9781417511396

Size: 3 MB (3163020 bytes)

Pages: 432/432

File format:

Language:

Publishing Year:

Category:

J. Suykens, G. Horvath, S. Basu1586033417, 9781586033415, 9781417511396

New methods, models, and applications in learning theory were the central themes of a NATO Advanced Study Institute held in July 2002. Contributors in neural networks, machine learning, mathematics, statistics, signal processing, and systems and control shed light on areas such as regularization parameters in learning theory, Cucker Smale learning theory in Besov spaces, high-dimensional approximation by neural networks, and functional learning through kernels. Other subjects discussed include leave-one-out error and stability of learning algorithms with applications, regularized least-squares classification, support vector machines, kernels methods for text processing, multiclass learning with output codes, Bayesian regression and classification, and nonparametric prediction.

Reviews

There are no reviews yet.

Be the first to review “Advances in Learning Theory: Methods, Models and Applications”
Shopping Cart
Scroll to Top