This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classification algorithm. It is shown both with theoretical arguments and computer experiments that good compression rates can be achieved outperforming the accuracy of the standard nearest neighbor classification algorithm and obtaining almost the same accuracy as the k-NN algorithm with k optimised in each data set. The improvement in time performance is proportional to the compression rate and in general it depends on the data set. The comparison of the classification accuracy of the proposed algorithm with a local symmetrically weighted metric and with a global metric strongly shows that the proposed scheme is to be preferre
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...
Nearest neighbor (NN) rule is one of the simplest and the most important methods in pattern recognit...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbour classificati...
A local distance measure for the nearest neighbor classification rule is shown to achieve high comp...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
This paper presents two metrics for the Nearest Neighbor Classifier that share the property of being...
The Nearest Neighbor (NN) classification/regression techniques, besides their simplicity, are amongs...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
The usefulness and the efficiency of the kth nearest neighbor classification procedure are well know...
The Nearest Neighbor (NN) classification/regression techniques, besides their sim-plicity, is one of...
A Nearest Neighbor (NN) classifier assumes class conditional probabilities to be locally smooth. Thi...
Nearest neighbor classification assumes locally constant class conditional probabilities. This assum...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...
Nearest neighbor (NN) rule is one of the simplest and the most important methods in pattern recognit...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbour classificati...
A local distance measure for the nearest neighbor classification rule is shown to achieve high comp...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
This paper presents two metrics for the Nearest Neighbor Classifier that share the property of being...
The Nearest Neighbor (NN) classification/regression techniques, besides their simplicity, are amongs...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
The nearest neighbor technique is a simple and appealing approach to addressing classification probl...
The usefulness and the efficiency of the kth nearest neighbor classification procedure are well know...
The Nearest Neighbor (NN) classification/regression techniques, besides their sim-plicity, is one of...
A Nearest Neighbor (NN) classifier assumes class conditional probabilities to be locally smooth. Thi...
Nearest neighbor classification assumes locally constant class conditional probabilities. This assum...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
We consider the problem of learning a local metric to enhance the performance of nearest neighbor cl...
Nearest neighbor (NN) rule is one of the simplest and the most important methods in pattern recognit...