Precision parameter in the variable precision rough sets model: an application
Chao-Ton Su and
Jyh-Hwa Hsu
Omega, 2006, vol. 34, issue 2, 149-157
Abstract:
Despite their diverse applications in many domains, the variable precision rough sets (VPRS) model lacks a feasible method to determine a precision parameter ([beta]) value to control the choice of [beta]-reducts. In this study we propose an effective method to find the [beta]-reducts. First, we calculate a precision parameter value to find the subsets of information system that are based on the least upper bound of the data misclassification error. Next, we measure the quality of classification and remove redundant attributes from each subset. We use a simple example to explain this method and even a real-world example is analyzed. Comparing the implementation results from the proposed method with the neural network approach, our proposed method demonstrates a better performance.
Keywords: VPRS; model; [beta]-reduct; Precision; parameter; Neural; networks (search for similar items in EconPapers)
Date: 2006
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Citations: View citations in EconPapers (4)
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