This paper introduces an algorithm that uses boosting to learn a distance measure for multiclass k-nearest neighbor classification. Given a family of distance measures as input, AdaBoost is used to learn a weighted distance measure, that is a linear combination of the input measures. The proposed method can be seen both as a novel way to learn a distance measure from data, and as a novel way to apply boosting to multiclass recognition problems, that does not require output codes. In our approach, multiclass recognition of objects is reduced into a single binary recognition task, defined on triples of objects. Preliminary experiments with eight UCI datasets yield no clear winner among our method, boosting using output codes, and k-nn classif...
Abstract. The Nearest Neighbor (NN) classification/regression tech-niques, besides their simplicity,...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
Object recognition is an active research topic in the computer vision community. Recently a novel Im...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
Normally the distance function used in classification in the k-Nearest Neighbors algorithm is the eu...
A Nearest Neighbor (NN) classifier assumes class conditional probabilities to be locally smooth. Thi...
National Natural Science Foundation of China [61174161]; Specialized Research Fund for the Doctoral ...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Abstract—Many researches have been devoted to learn a Mahalanobis distance metric, which can effecti...
A distance based classification is one of the popular methods for classifying instances using a poin...
The Nearest Neighbor (NN) classifier uses all training instances in the generalization phase and cau...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
Perhaps the most straightforward classifier in the arsenal or machine learning techniques is the Nea...
We study large-scale image classification methods that can incorporate new classes and training imag...
Abstract. The Nearest Neighbor (NN) classification/regression tech-niques, besides their simplicity,...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
Object recognition is an active research topic in the computer vision community. Recently a novel Im...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
Normally the distance function used in classification in the k-Nearest Neighbors algorithm is the eu...
A Nearest Neighbor (NN) classifier assumes class conditional probabilities to be locally smooth. Thi...
National Natural Science Foundation of China [61174161]; Specialized Research Fund for the Doctoral ...
This thesis is related to distance metric learning for kNN classification. We use the k nearest neig...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Abstract—Many researches have been devoted to learn a Mahalanobis distance metric, which can effecti...
A distance based classification is one of the popular methods for classifying instances using a poin...
The Nearest Neighbor (NN) classifier uses all training instances in the generalization phase and cau...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
Perhaps the most straightforward classifier in the arsenal or machine learning techniques is the Nea...
We study large-scale image classification methods that can incorporate new classes and training imag...
Abstract. The Nearest Neighbor (NN) classification/regression tech-niques, besides their simplicity,...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
Object recognition is an active research topic in the computer vision community. Recently a novel Im...