Title of article
On the 2-tuples based genetic tuning performance for fuzzy rule based classification systems in imbalanced data-sets
Author/Authors
Alberto Fern?ndez، نويسنده , , Maria Jose del Jesus، نويسنده , , Francisco Herrera، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
24
From page
1268
To page
1291
Abstract
When performing a classification task, we may find some data-sets with a different class distribution among their patterns. This problem is known as classification with imbalanced data-sets and it appears in many real application areas. For this reason, it has recently become a relevant topic in the area of Machine Learning.
The aim of this work is to improve the behaviour of fuzzy rule based classification systems (FRBCSs) in the framework of imbalanced data-sets by means of a tuning step. Specifically, we adapt the 2-tuples based genetic tuning approach to classification problems showing the good synergy between this method and some FRBCSs.
Our empirical results show that the 2-tuples based genetic tuning increases the performance of FRBCSs in all types of imbalanced data. Furthermore, when the initial Rule Base, built by a fuzzy rule learning methodology, obtains a good behaviour in terms of accuracy, we achieve a higher improvement in performance for the whole model when applying the genetic 2-tuples post-processing step. This enhancement is also obtained in the case of cooperation with a preprocessing stage, proving the necessity of rebalancing the training set before the learning phase when dealing with imbalanced data.
Keywords
Fuzzy rule based classification systems , Linguistic 2-tuples representation , tuning , Genetic Fuzzy Systems , Imbalanced data-sets , Genetic algorithms
Journal title
Information Sciences
Serial Year
2010
Journal title
Information Sciences
Record number
1213907
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