We present a novel method that aims at providing a more stable selection of feature subsets when variations in the training process occur. This is accomplished by using an instance-weighting process -assigning different importances to instances as a preprocessing step to a feature weighting method that is independent of the learner, and then making good use of both sets of computed weigths in a standard Nearest-Neighbours classifier. We report extensive experimentation in well-known benchmarking datasets as well as some challenging microarray gene expression problems. Our results show increases in stability for most subset sizes and most problems, without compromising prediction accuracy.Peer Reviewe
This paper presents an evolutionary method for modifying the behaviour of the k-Nearest-Neighbour cl...
Abstract. The major hypothesis that we will be prove in this paper is that unsupervised learning tec...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
We present a novel method that aims at providing a more stable selection of feature subsets when var...
. Nearest-neighbor algorithms are known to depend heavily on their distance metric. In this paper, w...
The development of, data-mining applications such as text-classification and molecular profiling has...
Nearest neighbor Classification a b s t r a c t The Nearest Neighbor rule is one of the most success...
International audienceThe development of data-mining applications such as textclassification and mol...
The standard kNN algorithm suffers from two major drawbacks: sensitivity to the parameter value k, i...
We consider feature selection and weighting for nearest neighbor classifiers. A technical challenge ...
Multiclass classification and feature (variable) selections are commonly encountered in many biologi...
The basic nearest-neighbor rule generalizes well in many domains but has several shortcomings, inclu...
Abstract. Many lazy learning algorithms are derivatives of the k-nearest neighbor (k-NN) classifier,...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Abstract. Nearest-neighbor algorithms are known to depend heavily on their distance metric. In this ...
This paper presents an evolutionary method for modifying the behaviour of the k-Nearest-Neighbour cl...
Abstract. The major hypothesis that we will be prove in this paper is that unsupervised learning tec...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
We present a novel method that aims at providing a more stable selection of feature subsets when var...
. Nearest-neighbor algorithms are known to depend heavily on their distance metric. In this paper, w...
The development of, data-mining applications such as text-classification and molecular profiling has...
Nearest neighbor Classification a b s t r a c t The Nearest Neighbor rule is one of the most success...
International audienceThe development of data-mining applications such as textclassification and mol...
The standard kNN algorithm suffers from two major drawbacks: sensitivity to the parameter value k, i...
We consider feature selection and weighting for nearest neighbor classifiers. A technical challenge ...
Multiclass classification and feature (variable) selections are commonly encountered in many biologi...
The basic nearest-neighbor rule generalizes well in many domains but has several shortcomings, inclu...
Abstract. Many lazy learning algorithms are derivatives of the k-nearest neighbor (k-NN) classifier,...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Abstract. Nearest-neighbor algorithms are known to depend heavily on their distance metric. In this ...
This paper presents an evolutionary method for modifying the behaviour of the k-Nearest-Neighbour cl...
Abstract. The major hypothesis that we will be prove in this paper is that unsupervised learning tec...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...