Attribute Reduction using Forward Selection and Relative Reduct Algorithm
P. Kalyani,M. Karnan +1 more
TL;DR: This paper analyses the efficiency of the proposed backward relative reduct algorithm against forward selection algorithm on car data base of UCI machine learning repository.
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Abstract: Attribute reduction of an information system is a key problem in rough set theory and its applications. Rough set theory has been one of the most successful methods used for feature selection. Rough set is one of the most useful data mining techniques. This paper proposes relative reduct to solve the attribute reduction problem in roughest theory. It is the most promising technique in the Rough set theory, a new mathematical approach to reduct car dataset using relative reduct algorithm. The redundant attributes are eliminated in order to generate the effective reduct set (i.e., reduced set of necessary attributes) or to construct the core of the attribute set. The technique was originally proposed to avoid the calculation of discernibility functions or positive regions, which can be computationally expensive without optimizations. This paper analyses the efficiency of the proposed backward relative reduct algorithm against forward selection algorithm. The experiments are carried out on car data base of UCI machine learning repository.
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References
•Book
Rough Sets: Theoretical Aspects of Reasoning about Data
Zdzisław Pawlak
- 31 Oct 1991
TL;DR: Theoretical Foundations.
8.8K
Semantics-preserving dimensionality reduction: rough and fuzzy-rough-based approaches
Richard Jensen,Qiang Shen +1 more
TL;DR: This paper reviews those techniques that preserve the underlying semantics of the data, using crisp and fuzzy rough set-based methodologies, and several approaches to feature selection based on rough set theory are experimentally compared.