This volume provides students, researchers and application developers
with the knowledge and tools to get the most out of using neural
networks and related data modelling techniques to solve pattern
recognition problems. Each chapter covers a group of related pattern
recognition techniques and includes a range of examples to show how
these techniques can be applied to solve practical problems.
Features of particular interest include:
-
A NETLAB toolbox which is freely available
-
Worked examples, demonstration programs and over 100 graded
exercises
-
Cutting edge research made accessible for the first time in a highly
usable form
-
Comprehensive coverage of visualisation methods, Bayesian techniques
for neural networks and Gaussian Processes
Although primarily a textbook for teaching undergraduate and
postgraduate courses in pattern recognition and neural networks, this
book will also be of interest to practitioners and researchers who can
use the toolbox to develop application solutions and new models.
"...provides a unique collection of many of the most important pattern
recognition algorithms. With its use of compact and easily modified
MATLAB scripts, the book is ideally suited to both teaching and
research."
Christopher Bishop, Microsoft Research, Cambridge, UK
"...a welcome addition to the literature on neural networks and how to
train and use them to solve many of the statistical problems that occur
in data analysis and data mining" Jack Cowan, Mathematics Department,
University of Chicago, US
"If you have a pattern recognition problem, you should consider NETLAB;
if you use NETLAB you must have this book." Keith Worden, University of
Sheffield, UK