Encouraging Complementary Fuzzy Rules within Iterative Rule Learning


Autoria(s): Singh, Vishal; Shen, Qiang; Galea, Michelle
Contribuinte(s)

Department of Computer Science

Advanced Reasoning Group

Data(s)

23/01/2008

23/01/2008

2005

Resumo

M. Galea, Q. Shen and V. Singh. Encouraging Complementary Fuzzy Rules within Iterative Rule Learning. Proceedings of the 2005 UK Workshop on Computational Intelligence, pages 15-22.

Iterative rule learning is a common strategy for fuzzy rule induction using stochastic population-based algorithms (SPBAs) such as Ant Colony Optimisation and genetic algorithms. Several SPBAs are run in succession with the result of each being a rule added to an emerging final ruleset. Between SPBA runs, cases in the training set that are covered by the newly evolved rule are generally removed, so as to encourage the next SPBA to find good rules describing the remaining cases. This paper compares this IRL variant with another variant that instead weights cases between iterations. The latter approach results in improved classification accuracy and an increased robustness to parameter value changes.

Non peer reviewed

Formato

8

Identificador

Singh , V , Shen , Q & Galea , M 2005 , ' Encouraging Complementary Fuzzy Rules within Iterative Rule Learning ' pp. 15-22 .

PURE: 74876

PURE UUID: 6dd9610a-b060-4451-a366-12f6ce91b7e9

dspace: 2160/459

http://hdl.handle.net/2160/459

Idioma(s)

eng

Tipo

/dk/atira/pure/researchoutput/researchoutputtypes/contributiontoconference/paper

Relação

Direitos