Fuzzy Cognitive Maps (FCM) constitute cognitive models in the
form of fuzzy directed graphs consisting of two basic elements: the
nodes, which basically correspond to "concepts " bearing different
states of activation depending on the knowledge they represent, and
the "edges " denoting the causal effects that each source node
exercises on the receiving concept expressed through weights.
Weights take values in the interval -1,1], which denotes the
positive, negative or neutral causal relationship between two
concepts. An FCM can be typically obtained through linguistic
terms, inherent to fuzzy systems, but with a structure similar to
the neural networks, which facilitates data processing, and has
capabilities for training and adaptation.
During the last 10 years, an exponential growth of published
papers in FCMs was followed showing great impact potential.
Different FCM structures and learning schemes have been developed,
while numerous studies report their use in many contexts with
highly successful modeling results.
The aim of this book is to fill the existing gap in the
literature concerning fundamentals, models, extensions and learning
algorithms for FCMs in knowledge engineering. It comprehensively
covers the state-of-the-art FCM modeling and learning methods, with
algorithms, codes and software tools, and provides a set of
applications that demonstrate their various usages in applied
sciences and engineering."
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