Fuzzy-rough instance selection

Rough set theory provides a useful mathematical foundation for developing automated computational systems that can help understand and make use of imperfect knowledge. Since its introduction, this theory has been successfully utilised to devise mathematically sound and often, computationally efficient techniques for addressing problems such as hidden pattern discovery from data, feature selection and decision rule generation. Fuzzy-rough set theory improves upon this by enabling uncertainty and vagueness to be modeled more effectively. Recently, the value of fuzzy-rough sets for feature selection and rule induction has been established. However, the potential of this theory for instance selection has not been investigated at all. This paper proposes three novel methods for instance selection based on fuzzy-rough sets. The initial experimentation demonstrates that the methods can significantly reduce the number of instances whilst maintaining high classification accuracies.

[1]  Didier Dubois,et al.  Putting Rough Sets and Fuzzy Sets Together , 1992, Intelligent Decision Support.

[2]  Chris Cornelis,et al.  Fuzzy Rough Sets: The Forgotten Step , 2007, IEEE Transactions on Fuzzy Systems.

[3]  Z. Pawlak Rough Sets: Theoretical Aspects of Reasoning about Data , 1991 .

[4]  Anna Maria Radzikowska,et al.  A comparative study of fuzzy rough sets , 2002, Fuzzy Sets Syst..

[5]  Rafael Bello,et al.  A Method to Edit Training Set Based on Rough Sets , 2007 .

[6]  Pawan Lingras,et al.  Survey of Rough and Fuzzy Hybridization , 2007, 2007 IEEE International Fuzzy Systems Conference.

[7]  Daniel S. Yeung,et al.  On attributes reduction with fuzzy rough sets , 2005, 2005 IEEE International Conference on Systems, Man and Cybernetics.

[8]  Janusz Zalewski,et al.  Rough sets: Theoretical aspects of reasoning about data , 1996 .

[9]  Chris Cornelis,et al.  Attribute selection with fuzzy decision reducts , 2010, Inf. Sci..

[10]  Catherine Blake,et al.  UCI Repository of machine learning databases , 1998 .

[11]  Jack Koplowitz,et al.  On the relation of performance to editing in nearest neighbor rules , 1981, Pattern Recognit..

[12]  Chris Cornelis,et al.  A New Approach to Fuzzy-Rough Nearest Neighbour Classification , 2008, RSCTC.

[13]  Chris Cornelis,et al.  A noise-tolerant approach to fuzzy-rough feature selection , 2008, 2008 IEEE International Conference on Fuzzy Systems (IEEE World Congress on Computational Intelligence).

[14]  Qiang Shen,et al.  New Approaches to Fuzzy-Rough Feature Selection , 2009, IEEE Transactions on Fuzzy Systems.