Sciweavers

FUZZIEEE
2007
IEEE

Learning Fuzzy Linguistic Models from Low Quality Data by Genetic Algorithms

14 years 5 months ago
Learning Fuzzy Linguistic Models from Low Quality Data by Genetic Algorithms
— Incremental rule base learning techniques can be used to learn models and classifiers from interval or fuzzyvalued data. These algorithms are efficient when the observation error is small. This paper is about datasets with medium to high discrepancies between the observed and the actual values of the variables, such as those containing missing values and coarsely discretized data. We will show that the quality of the iterative learning degrades in this kind of problems, and that it does not make full use of all the available information. As an alternative, we propose a new implementation of a mutiobjective Michiganlike algorithm, where each individual in the population codifies one rule and the individuals in the Pareto front form the knowledge base.
Luciano Sánchez, José Otero
Added 02 Jun 2010
Updated 02 Jun 2010
Type Conference
Year 2007
Where FUZZIEEE
Authors Luciano Sánchez, José Otero
Comments (0)