Distance metric learning (DML) aims to learn a distance metric better than Euclidean distance. It has been successfully applied to various tasks, e.g., classification, clustering and information retrieval. Many DML algorithms suffer from the over-fitting problem because of a large number of parameters to be determined in DML. In this paper, we exploit the dropout technique, which has been successfully applied in deep learning to alleviate the over-fitting problem, for DML. Different from the previous studies that only apply dropout to training data, we apply dropout to both the learned metrics and the training data. We illustrate that application of dropout to DML is essentially equivalent to matrix norm based regularization. Compared with ...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Metric learning aims to learn a distance metric such that semantically similar instances are pulled ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Distance metric learning (DML) aims to learn a distance metric better than Euclidean distance. It ha...
The key idea of Deep Metric Learning (DML) is to learn a set of hierarchical non-linear mappings usi...
Dropout and other feature noising schemes control overfitting by artificially cor-rupting the traini...
Dropout and other feature noising schemes control overfitting by artificially cor-rupting the traini...
Distance metric learning (DML) has received increasing attention in recent years. In this paper, we ...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
Dropout is one of the most popular regularization methods used in deep learning. The general form of...
In this paper we present two related, kernelbased Distance Metric Learning (DML) methods. Their resp...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Abstract. Learning a proper distance metric is of vital importance for many distance based applicati...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Metric learning aims to learn a distance metric such that semantically similar instances are pulled ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Distance metric learning (DML) aims to learn a distance metric better than Euclidean distance. It ha...
The key idea of Deep Metric Learning (DML) is to learn a set of hierarchical non-linear mappings usi...
Dropout and other feature noising schemes control overfitting by artificially cor-rupting the traini...
Dropout and other feature noising schemes control overfitting by artificially cor-rupting the traini...
Distance metric learning (DML) has received increasing attention in recent years. In this paper, we ...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
Distance metric learning (DML) is a critical factor for image analysis and pattern recognition. To l...
© 2016 IEEE. Distance metric learning plays an important role in many applications, such as classifi...
Dropout is one of the most popular regularization methods used in deep learning. The general form of...
In this paper we present two related, kernelbased Distance Metric Learning (DML) methods. Their resp...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Abstract. Learning a proper distance metric is of vital importance for many distance based applicati...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Metric learning aims to learn a distance metric such that semantically similar instances are pulled ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...