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ICPR
2010
IEEE

An Optimum Class-Rejective Decision Rule and Its Evaluation

13 years 10 months ago
An Optimum Class-Rejective Decision Rule and Its Evaluation
Decision-making systems intend to copy human reasoning which often consists in eliminating highly non probable situations (e.g. diseases, suspects) rather than selecting the most reliable ones. In this paper, we present the concept of class-rejective rules for pattern recognition. Contrary to usual reject option schemes where classes are selected when they may correspond to the true class of the input pattern, it allows to discard classes that can not be the true one. Optimality of the rule is proven and an upper-bound for the error probability is given. We also propose a criterion to evaluate such class-rejective rules. Classification results on artificial and real datasets are provided. Keywords-bayesian classification; decision rules; loss structure; reject option; risk minimization;
Hoel Le Capitaine, Carl Frélicot
Added 13 Feb 2011
Updated 13 Feb 2011
Type Journal
Year 2010
Where ICPR
Authors Hoel Le Capitaine, Carl Frélicot
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