2022
DOI: 10.3390/s22062211
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An Accelerating Reduction Approach for Incomplete Decision Table Using Positive Approximation Set

Abstract: Due to the explosive growth of data collected by various sensors, it has become a difficult problem determining how to conduct feature selection more efficiently. To address this problem, we offer a fresh insight into rough set theory from the perspective of a positive approximation set. It is found that a granularity domain can be used to characterize the target knowledge, because of its form of a covering with respect to a tolerance relation. On the basis of this fact, a novel heuristic approach ARIPA is pro… Show more

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References 36 publications
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