The success of many machine learning and pattern recognition methods relies heavily upon the identification of on an appropriate distance metric on the input data. It is often beneficial to learn such a metric from the input training data, instead of using a default one such as the Euclidean distance. In this work, we propose a boosting-based technique, termed BoostMetric, for learning a quadratic Mahalanobis distance metric. Learning a valid Mahalanobis distance metric requires enforcing the constraint that the matrix parameter to the metric remains positive semidefinite. Semidefinite programming is often used to enforce this constraint, but does not scale well and not easy to implement. BoostMetric is instead based on the observation that...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The learning of appropriate distance metrics is a critical problem in image classification and retri...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classification and retri...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
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...
A distance metric that can accurately re°ect the intrinsic characteristics of data is critical for v...
Distance metric learning has been successfully incorporated in many machine learning applications. T...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The learning of appropriate distance metrics is a critical problem in image classification and retri...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classifi-cation and retr...
The learning of appropriate distance metrics is a critical problem in image classification and retri...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
A distance metric that can accurately reflect the intrinsic characteristics of data is critical for ...
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...
A distance metric that can accurately re°ect the intrinsic characteristics of data is critical for v...
Distance metric learning has been successfully incorporated in many machine learning applications. T...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...
The key to success of many machine learning and pattern recognition algorithms is the way of computi...