Title of article :
A logic method for efficient reduction of the space complexity of the attribute reduction problem
Author/Authors :
HACIBEYOGLU, Mehmet Selcuk University - Faculty of Engineering and Architecture - Department of Computer Engineering, TURKEY , BASCIFTCI, Fatih Selcuk University - Faculty of Technical Education - Department of Electronic and Computer Education, TURKEY , KAHRAMANLI, S¸irzat Selcuk University - Faculty of Engineering and Architecture - Department of Computer Engineering, TURKEY
From page :
643
To page :
656
Abstract :
The goal of attribute reduction is to find a minimal subset (MS) R of the condition attribute set C ofa dataset such that R has the same classification power as C. It was proved that the number of MSs for a dataset with n attributes may be as large as (n n/2) and the generation of all of them is an NP-hard problem. The main reason for this is the intractable space complexity of the conversion of the discernibility function (DF) of a dataset to the disjunctive normal form (DNF). Our analysis of many DF-to-DNF conversion processes showed that approximately (1 − 2/(n n/2) × 100)% of the implicants generated in the DF-to-DNF process are redundant ones. We prevented their generation based on the Boolean inverse distribution law. Due to this property, the proposed method generates 0.5 × (n n/2) times fewer implicants than other Boolean logic-based attribute reduction methods. Hence, it can process most of the datasets that cannot be processed by other attribute reduction methods.
Keywords :
Information system , dataset , attribute reduction , feature selection , discernibility function , computational complexity , reduct
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Record number :
2532092
Link To Document :
بازگشت