A Multiple-category Classification Approach with Decision-theoretic Rough Sets

Fundam. Inform.(2012)

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摘要
By considering the levels of tolerance for errors and the cost of actions in real decision procedure, a new two-stage approach is proposed to solve the multiple-category classification problems with Decision-Theoretic Rough Sets (DTRS). The first stage is to change an m-category classification problem (m 2) into an m two-category classification problem, and form three types of decision regions: positive region, boundary region and negative region with different states and actions by using DTRS. The positive region makes a decision of acceptance, the negative region makes a decision of rejection, and the boundary region makes a decision of abstaining. The second stage is to choose the best candidate classification in the positive region by using the minimum probability error criterion with Bayesian discriminant analysis approach. A case study of medical diagnosis demonstrates the proposed method.
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关键词
m-category classification problem,best candidate classification,negative region,boundary region,positive region,multiple-category classification approach,multiple-category classification problem,m two-category classification problem,decision region,decision-theoretic rough sets,bayesian discriminant analysis approach,real decision procedure
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