We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor classification. Our work is built upon the large margin nearest neighbor (LMNN) classification framework. Due to the semidefiniteness constraint in the optimization problem of LMNN, it is not scalable in terms of the dimensionality of the input data. The original LMNN solver partially alleviates this problem by adopting alternating projection methods instead of standard interior-point methods. Still, at each iteration, the computation complexity is at least O(D3) (D is the dimension of input data). In this work, we propose a column generation based algorithm to solve the LMNN optimization problem much more efficiently. Our algorithm is much more ...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Göpfert C, Paaßen B, Hammer B. Convergence of Multi-pass Large Margin Nearest Neighbor Metric Learni...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
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...
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...
We introduce a novel supervised metric learning algorithm named parameter free large margin nearest ...
<p> We introduce a novel supervised metric learning algorithm named parameter free large margin nea...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
Distance metric learning is the task that aims to automate this process of learning task-specific di...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
In this paper, we raise important issues concerning the evaluation complexity of existing Mahalanobi...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Göpfert C, Paaßen B, Hammer B. Convergence of Multi-pass Large Margin Nearest Neighbor Metric Learni...
We concern the problem of learning a Mahalanobis distance metric for improving nearest neighbor clas...
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...
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...
We introduce a novel supervised metric learning algorithm named parameter free large margin nearest ...
<p> We introduce a novel supervised metric learning algorithm named parameter free large margin nea...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
Distance metric learning is the task that aims to automate this process of learning task-specific di...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
In this paper, we raise important issues concerning the evaluation complexity of existing Mahalanobi...
Metric learning has been shown to significantly improve the accuracy of k-nearest neighbor (kNN) cla...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
Göpfert C, Paaßen B, Hammer B. Convergence of Multi-pass Large Margin Nearest Neighbor Metric Learni...