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BAYESIAN LEARNING FOR NEURAL NETWORKS
NEAL R. wydawnictwo: SPRINGER , rok wydania 1996, wydanie I cena netto: 400.00 Twoja cena 380,00 zł + 5% vat - dodaj do koszyka Bayesian Learning for Neural Networks, Vol. 118
Artificial "neural networks" are now widely used as flexible models for
regression classification applications, but questions remain regarding what these models
mean, and how they can safely be used when training data is limited. Bayesian Learning for
Neural Networks shows that Bayesian methods allow complex neural network models to be used
without fear of the "overfitting" that can occur with traditional neural network
learning methods. Insight into the nature of these complex Bayesian models is provided by
a theoretical investigation of the priors over functions that underlie them. Use of these
models in practice is made possible using Markov chain Monte Carlo techniques. Both the
theoretical and computational aspects of this work are of wider statistical interest, as
they contribute to a better understanding of how Bayesian methods can be applied to
complex problems. Presupposing only the basic knowledge of probability and statistics,
this book should be of interest to many researchers in statistics, engineering, and
artificial intelligence. Software for Unix systems that implements the methods described
is freely available over the Internet.
Paperback, 204 pages
Po otrzymaniu zamówienia poinformujemy, czy wybrany tytuł polskojęzyczny lub
anglojęzyczny jest aktualnie na półce księgarni.
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