Machine learning is concerned with the analysis of large data and
multiple variables. However, it is also often more sensitive than
traditional statistical methods to analyze small data. The first volume
reviewed subjects like optimal scaling, neural networks, factor
analysis, partial least squares, discriminant analysis, canonical
analysis, and fuzzy modeling. This second volume includes various
clustering models, support vector machines, Bayesian networks, discrete
wavelet analysis, genetic programming, association rule learning,
anomaly detection, correspondence analysis, and other subjects. Both the
theoretical bases and the step by step analyses are described for the
benefit of non-mathematical readers. Each chapter can be studied without
the need to consult other chapters. Traditional statistical tests are,
sometimes, priors to machine learning methods, and they are also,
sometimes, used as contrast tests. To those wishing to obtain more
knowledge of them, we recommend to additionally study (1) Statistics
Applied to Clinical Studies 5th Edition 2012, (2) SPSS for Starters Part
One and Two 2012, and (3) Statistical Analysis of Clinical Data on a
Pocket Calculator Part One and Two 2012, written by the same authors,
and edited by Springer, New York.