1: Statistical pattern recognition
2: Probability density estimation
3: Single-layer networks
4: The multi-layer perceptron
5: Radial basis functions
6: Error functions
7: Parameter optimization algorithms
8: Pre-processing and feature extraction
9: Learning and generalization
10: Bayesian techniques
excellent... Bishop is able to achieve a level of depth on these
topics which is unparalleled in other neural-net texts.... clear
and concise mathematical analysis. Bishop's text [] picks up where
Duda and Hart left off, and, luckily does so with the same level of
clarity and elegance. Neural Networks for Pattern Recognition is an
excellent read, and represents a real contribution to the
neural-net community. IEEE Transactions on Neural Networks,
May 1997
`this is an excellent book in the specialised area of statistical
pattern recognition with statistical neural nets ... a good
starting point for new students in those laboratories where
research into statistico-neural pattern recognition is being done
... The examples for the reader at the end of this and every
chapter are well chosen and will ensure sales as a course textbook
... this is a first-class book for the researcher in statistical
pattern
recognition.'
Times Higher
Bishop leads the way through a forest of mathematical minutiae.
Readers will emerge with a rigorous statistical grounding in the
theory of how to construct and train neural networks in pattern
recognition. New Scientist
[Bishop] has written a textbook, introducing techniques, relating
them to the theory, and explaining their pitfalls. Moreover, a
large set of exercises makes it attractive for the teacher to use
the book.... should be warmly welcomed by the neural network and
pattern recognition communities. Bishop can be recommended to
students and engineers in computer science. The Computer Journal,
Volume 39, No. 6, 1996
Its sequential organization and end-of chapter exercises make it an
ideal mental gymnasium. The author has eschewed biological metaphor
and sweeping statements in favour of welcome mathematical rigour.
Scientific Computing World
`a neural network introduction placed in a pattern recognition
context. ...He has written a textbook, introducing techniques,
relating them to the theory and explaining their pitfalls.
Moreover, a large set of exercises makes it attractive for the
teacher to use the book ... should be warmly welcomed by the neural
network and pattern recognition communities.'
Robert P. W. Duin, IAPR Newsletter Vol. 19 No. 2 April 1997
`This outstanding book contributes remarkably to a better
statistical understanding of artificial neural networks. The
superior quality of this book is that it presents a comprehensive
self-contained survey of feed-forward networks from the point of
view of statistical pattern recognition.'
Zbl.Math 868
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