<p> We introduce a novel supervised metric learning algorithm named parameter free large margin nearest neighbor (PFLMNN) which can be seen as an improvement of the classical large margin nearest neighbor (LMNN) algorithm. The contributions of our work consist of two aspects. First, our method discards the cost term which shrinks the distances between inquiry input and its k target neighbors (the k nearest neighbors with same labels as inquiry input) in LMNN, and only focuses on improving the action to push the imposters (the samples with different labels form the inquiry input) apart out of the neighborhood of inquiry. As a result, our method does not have the parameter needed to tune on the validating set, which makes it more convenient ...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...
We introduce a novel supervised metric learning algorithm named parameter free large margin nearest ...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
For many machine learning algorithms such as k-nearest neighbor ( k-NN) classifiers and k-means clus...
For many machine learning algorithms such as k-nearest neighbor ( k-NN) classifiers and k-means clus...
Abstract. The Nearest Neighbor (NN) classification/regression tech-niques, besides their simplicity,...
The Nearest Neighbor (NN) classification/regression techniques, besides their simplicity, are amongs...
Distance metric learning is the task that aims to automate this process of learning task-specific di...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...
We introduce a novel supervised metric learning algorithm named parameter free large margin nearest ...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
We show how to learn aMahanalobis distance metric for k-nearest neigh-bor (kNN) classification by se...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
For many machine learning algorithms such as k-nearest neighbor ( k-NN) classifiers and k-means clus...
For many machine learning algorithms such as k-nearest neighbor ( k-NN) classifiers and k-means clus...
Abstract. The Nearest Neighbor (NN) classification/regression tech-niques, besides their simplicity,...
The Nearest Neighbor (NN) classification/regression techniques, besides their simplicity, are amongs...
Distance metric learning is the task that aims to automate this process of learning task-specific di...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
The use of distance metrics such as the Euclidean or Manhattan distance for nearest neighbour algori...