The Nearest Neighbor classifier is a popular nonparametric classification method that has been successfully applied to many pattern recognition problems. Its usefulness has been limited, however, because of its computational complexity and sensitivity to outliers in the training set. Computational complexity is becoming less of an issue thanks to the availability of inexpensive memory and high processing speeds. To overcome the second limitation, sensitivity to outliers in the training set, researchers have developed editing and condensing techniques that are aimed at selecting a proper set of prototypes from the training set. In this work, we propose a new editing technique based on the idea of rewarding those patterns that make a contribu...
Selected nonparametric methods of statistical pattern recognition are described. A part of them form...
We present a novel method that aims at providing a more stable selection of feature subsets when var...
International audienceThe development of data-mining applications such as textclassification and mol...
The Nearest Neighbor classifier is a popular nonparametric classification method that has been succe...
The nearest neighbor (NN) classifier represents one of the most popular non-parametric classificatio...
none3In this work a novel editing technique is proposed. The basic idea of the algorithm is to rewar...
Repeated edited nearest neighbor using unlabeled data. Our idea relies on the fact that in many appl...
In this work a novel technique for building ensemble of classifiers is presented. The proposed appro...
Some new rank methods to select the best prototypes from a training set are proposed in this paper i...
It is well known that editing techniques can be applied to (large) sets of prototypes in order to br...
The quality and size of the training data sets is a critical stage on the ability of the artificial ...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
The development of data-mining applications such as textclassification and molecular profiling has s...
Nearest neighbor Classification a b s t r a c t The Nearest Neighbor rule is one of the most success...
The nearest neighbor rule is one of the most considered algorithms for supervised learning because o...
Selected nonparametric methods of statistical pattern recognition are described. A part of them form...
We present a novel method that aims at providing a more stable selection of feature subsets when var...
International audienceThe development of data-mining applications such as textclassification and mol...
The Nearest Neighbor classifier is a popular nonparametric classification method that has been succe...
The nearest neighbor (NN) classifier represents one of the most popular non-parametric classificatio...
none3In this work a novel editing technique is proposed. The basic idea of the algorithm is to rewar...
Repeated edited nearest neighbor using unlabeled data. Our idea relies on the fact that in many appl...
In this work a novel technique for building ensemble of classifiers is presented. The proposed appro...
Some new rank methods to select the best prototypes from a training set are proposed in this paper i...
It is well known that editing techniques can be applied to (large) sets of prototypes in order to br...
The quality and size of the training data sets is a critical stage on the ability of the artificial ...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
The development of data-mining applications such as textclassification and molecular profiling has s...
Nearest neighbor Classification a b s t r a c t The Nearest Neighbor rule is one of the most success...
The nearest neighbor rule is one of the most considered algorithms for supervised learning because o...
Selected nonparametric methods of statistical pattern recognition are described. A part of them form...
We present a novel method that aims at providing a more stable selection of feature subsets when var...
International audienceThe development of data-mining applications such as textclassification and mol...