The key idea of this book is that hinging hyperplanes, neural networks
and support vector machines can be transformed into fuzzy models, and
interpretability of the resulting rule-based systems can be ensured by
special model reduction and visualization techniques. The first part of
the book deals with the identification of hinging hyperplane-based
regression trees. The next part deals with the validation, visualization
and structural reduction of neural networks based on the transformation
of the hidden layer of the network into an additive fuzzy rule base
system. Finally, based on the analogy of support vector regression and
fuzzy models, a three-step model reduction algorithm is proposed to get
interpretable fuzzy regression models on the basis of support vector
regression.
The authors demonstrate real-world use of the algorithms with examples
taken from process engineering, and they support the text with
downloadable Matlab code. The book is suitable for researchers, graduate
students and practitioners in the areas of computational intelligence
and machine learning.