Distance metric plays an important role in many machine learning tasks. The distance between samples is mostly measured with a predefined metric, ignoring how the samples distribute in the feature space and how the features are correlated. This paper proposes a semi-supervised distance metric learning method by exploring feature correlations. Specifically, unlabeled samples are used to calculate the prediction error by means of local linear regression. Labeled samples are used to learn discriminative ability, that is, maximizing the between-class covariance and minimizing the within-class covariance. We then fuse the knowledge learned from both labeled and unlabeled samples into an overall objective function which can be solved by maximum e...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Abstract. This paper introduces a semi-supervised distance metric learning al-gorithm which uses pai...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
In plenty of scenarios, data can be represented as vectors and then mathematically abstracted as poi...
The ultimate goal of distance metric learning is to incorporate abundant discriminative information ...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Abstract. This paper introduces a semi-supervised distance metric learning al-gorithm which uses pai...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
In plenty of scenarios, data can be represented as vectors and then mathematically abstracted as poi...
The ultimate goal of distance metric learning is to incorporate abundant discriminative information ...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...