Single Reduct Generation Based on Relative Indiscernibility of Rough Set Theory
Shampa Sengupta, Asit Kr. Das

TL;DR
This paper proposes a new method for attribute reduction in datasets using relative indiscernibility in Rough Set Theory, improving classifier performance by selecting the most relevant attributes.
Contribution
It introduces a novel reduct generation technique based on relative indiscernibility, enhancing attribute selection efficiency in large datasets.
Findings
Effective attribute reduction on glass dataset
Improved classification accuracy with selected attributes
Method demonstrates high efficiency and effectiveness
Abstract
In real world everything is an object which represents particular classes. Every object can be fully described by its attributes. Any real world dataset contains large number of attributes and objects. Classifiers give poor performance when these huge datasets are given as input to it for proper classification. So from these huge dataset most useful attributes need to be extracted that contribute the maximum to the decision. In the paper, attribute set is reduced by generating reducts using the indiscernibility relation of Rough Set Theory (RST). The method measures similarity among the attributes using relative indiscernibility relation and computes attribute similarity set. Then the set is minimized and an attribute similarity table is constructed from which attribute similar to maximum number of attributes is selected so that the resultant minimum set of selected attributes (called…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Machine Learning and Data Classification
