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EUSFLAT
2007

Selecting the Optimal Rule Set Using a Bacterial Evolutionary Algorithm

13 years 6 months ago
Selecting the Optimal Rule Set Using a Bacterial Evolutionary Algorithm
In many regression learning algorithms for fuzzy rule bases it is not possible to define the error measure to be optimized freely. A possible alternative is the usage of global optimization algorithms like genetic programming approaches. These approaches, however, are very slow because of the high complexity of the search space. In this paper we present a novel approach where we first create a large set of (possibly) redundant rules using inductive rule learning and where we use a bacterial evolutionary algorithm to identify the best subset of rules in a subsequent step. The evolutionary algorithm tries to find an optimal rule set with respect to a freely definable goal function.
Mario Drobics, János Botzheim, Klaus-Peter
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2007
Where EUSFLAT
Authors Mario Drobics, János Botzheim, Klaus-Peter Adlassnig
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