Abstract A good measure of similarity between data points is crucial to many tasks in machine learning. Similarity and metric learning methods learn such measures automatically from data, but they do not scale well respect to the dimensionality of the data. In this paper, we propose a method that can learn efficiently similarity measure from highdimensional sparse data. The core idea is to parameterize the similarity measure as a convex combination of rank-one matrices with specific sparsity structures. The parameters are then optimized with an approximate Frank-Wolfe procedure to maximally satisfy relative similarity constraints on the training data. Our algorithm greedily incorporates one pair of features at a time into the similarity mea...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
The rapid development of modern information technology has significantly facilitated the generation,...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
International audienceA good measure of similarity between data points is crucial to many tasks in m...
Similarity and metric learning provides a principled approach to construct a task-specific similarit...
Abstract—For many data mining and machine learning tasks, the quality of a similarity measure is the...
International audienceIn recent years, the crucial importance of metrics in machine learning algorit...
In several applications, input samples are more naturally represented in terms of similarities betwe...
Similarity is the extent to which two objects resemble each other. Modeling similarity is an importa...
In recent years, the crucial importance of metrics in machine learning algorithms has led to an incr...
Leading machine learning techniques rely on inputs in the form of pairwise similarities between obje...
In this paper, we propose a general model to address the overfitting problem in online similarity le...
Metric learning has become a widespreadly used tool in machine learning. To reduce expensive costs ...
Due to the capability of effectively learning intrinsic structures from high-dimensional data, techn...
ABSTRACT Calculation of object similarity, for example through a distance function, is a common part...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
The rapid development of modern information technology has significantly facilitated the generation,...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
International audienceA good measure of similarity between data points is crucial to many tasks in m...
Similarity and metric learning provides a principled approach to construct a task-specific similarit...
Abstract—For many data mining and machine learning tasks, the quality of a similarity measure is the...
International audienceIn recent years, the crucial importance of metrics in machine learning algorit...
In several applications, input samples are more naturally represented in terms of similarities betwe...
Similarity is the extent to which two objects resemble each other. Modeling similarity is an importa...
In recent years, the crucial importance of metrics in machine learning algorithms has led to an incr...
Leading machine learning techniques rely on inputs in the form of pairwise similarities between obje...
In this paper, we propose a general model to address the overfitting problem in online similarity le...
Metric learning has become a widespreadly used tool in machine learning. To reduce expensive costs ...
Due to the capability of effectively learning intrinsic structures from high-dimensional data, techn...
ABSTRACT Calculation of object similarity, for example through a distance function, is a common part...
Abstract — Two novel unsupervised dimensionality reduction techniques, termed sparse distance preser...
The rapid development of modern information technology has significantly facilitated the generation,...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...