Learning distance functions with side information plays a key role in many data mining applications. Conventional distance metric learning approaches often assume that the target distance function is represented in some form of Mahalanobis distance. These approaches usually work well when data are in low dimensionality, but often become computationally expensive or even infeasible when handling high-dimensional data. In this paper, we propose a novel scheme of learning nonlinear distance functions with side information. It aims to learn a Bregman distance function using a nonparametric approach that is similar to Support Vector Machines. We emphasize that the proposed scheme is more general than the conventional approach for distance metric...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
Learning distance functions with side information plays a key role in many data mining applications....
Learning distance functions with side information plays a key role in many data mining applications....
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Many metric learning tasks, such as triplet learning, nearest neighbor retrieval, and visualization,...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
Functional Bregman divergences are an important class of divergences in machine learning that genera...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...
Learning distance functions with side information plays a key role in many data mining applications....
Learning distance functions with side information plays a key role in many data mining applications....
Many machine learning and pattern recognition algorithms rely on a distance metric. Instead of choos...
Many metric learning tasks, such as triplet learning, nearest neighbor retrieval, and visualization,...
A crucial problem in machine learning is to choose an appropriate representation of data, in a way t...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
textA large number of machine learning algorithms are critically dependent on the underlying distanc...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
Functional Bregman divergences are an important class of divergences in machine learning that genera...
Distance metric plays an important role in many machine learning tasks. The distance between samples...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
This paper introduces a semi-supervised distance metric learning algorithm which uses pair-wise equi...