Litcius/Paper detail

A topological reduction for predicting of a lung cancer disease based on generalized rough sets

Mostafa K. El-Bably, El-Sayed A. Abo-Tabl

2021Journal of Intelligent & Fuzzy Systems44 citationsDOI

Abstract

The present work proposes new styles of rough sets by using different neighborhoods which are made from a general binary relation. The proposed approximations represent a generalization to Pawlak’s rough sets and some of its generalizations, where the accuracy of these approximations is enhanced significantly. Comparisons are obtained between the methods proposed and the previous ones. Moreover, we extend the notion of “nano-topology”, which have introduced by Thivagar and Richard [49], to any binary relation. Besides, to demonstrate the importance of the suggested approaches for deciding on an effective tool for diagnosing lung cancer diseases, we include a medical application of lung cancer disease to identify the most risk factors for this disease and help the doctor in decision-making. Finally, two algorithms are given for decision-making problems. These algorithms are tested on hypothetical data for comparison with already existing methods.

Topics & Concepts

GeneralizationRough setRelation (database)Binary relationBinary numberComputer scienceReduction (mathematics)Lung cancerBinary classificationMathematicsMachine learningData miningArtificial intelligenceAlgorithmMedicineDiscrete mathematicsPathologyArithmeticSupport vector machineMathematical analysisGeometryRough Sets and Fuzzy LogicData Mining Algorithms and Applications