International audienceIn this paper, we investigate ways to learn efficiently from uncertain data using belief functions. In order to extract more knowledge from imperfect and insufficient information and to improve classification accuracy, we propose a supervised learning method composed of a feature selection procedure and a two-step classification strategy. Using training information, the proposed feature selection procedure automatically determines the most informative feature subset by minimizing an objective function. The proposed two-step classification strategy further improves the decision-making accuracy by using complementary information obtained during the classification process. The performance of the proposed method was evalua...
Abstract—Neighborhood based classifiers are commonly used in the applications of pattern classificat...
International audienceAssociative classification has been shown to provide interesting results whene...
International audienceAssociative classification has been shown to provide interesting results whene...
International audienceIn this paper, we investigate ways to learn efficiently from uncertain data us...
International audienceIn pattern classification problem, different classifiers learnt using differen...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceThe evidential K nearest neighbor classifier is based on discounting evidence ...
International audienceClassification is one of the most important tasks carried out by intelligent s...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceClassification is one of the most important tasks carried out by intelligent s...
International audienceIn some sensitive domains where data imperfections are present, standard class...
Abstract—Neighborhood based classifiers are commonly used in the applications of pattern classificat...
International audienceAssociative classification has been shown to provide interesting results whene...
International audienceAssociative classification has been shown to provide interesting results whene...
International audienceIn this paper, we investigate ways to learn efficiently from uncertain data us...
International audienceIn pattern classification problem, different classifiers learnt using differen...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceInformation fusion technique like evidence theory has been widely applied in t...
International audienceThe evidential K nearest neighbor classifier is based on discounting evidence ...
International audienceClassification is one of the most important tasks carried out by intelligent s...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceThe theory of belief functions has been successfully used in many classificati...
International audienceClassification is one of the most important tasks carried out by intelligent s...
International audienceIn some sensitive domains where data imperfections are present, standard class...
Abstract—Neighborhood based classifiers are commonly used in the applications of pattern classificat...
International audienceAssociative classification has been shown to provide interesting results whene...
International audienceAssociative classification has been shown to provide interesting results whene...