Knowledge-Based Neurocomputing: A Fuzzy Logic Approach
-
- US$159.99
-
- US$159.99
출판사 설명
In this monograph, the authors introduce a novel fuzzy rule-base, referred to as the Fuzzy All-permutations Rule-Base (FARB). They show that inferring the FARB, using standard tools from fuzzy logic theory, yields an input-output map that is mathematically equivalent to that of an artificial neural network. Conversely, every standard artificial neural network has an equivalent FARB.
The FARB-ANN equivalence integrates the merits of symbolic fuzzy rule-bases and sub-symbolic artificial neural networks, and yields a new approach for knowledge-based neurocomputing in artificial neural networks.
Fuzzy Logic and Expert Systems Applications
1998년
Computational Intelligence, Theory and Applications
2006년
Implementation Techniques (Enhanced Edition)
1998년
Cognitive Techniques in Visual Data Interpretation
2007년
Foundations of Fuzzy Logic and Soft Computing
2007년
Fuzzy Information and Engineering
2007년
Fuzzy Systems in Bioinformatics and Computational Biology
2008년
Theory and Practice of Uncertain Programming
2008년
Analytical Methods in Fuzzy Modeling and Control
2009년
Fuzzy Preference Ordering of Interval Numbers in Decision Problems
2009년
Views on Fuzzy Sets and Systems from Different Perspectives
2009년
Axiomatic Fuzzy Set Theory and Its Applications
2009년