International audienceIn recent years, the crucial importance of metrics in machine learning algorithms has led to an increasing interest for optimizing distance and similarity functions. Most of the state of the art focus on learning Mahalanobis distances (requiring to fulfill a constraint of positive semi-definiteness) for use in a local k-NN algorithm. However, no theoretical link is established between the learned metrics and their performance in classification. In this paper, we make use of the formal framework of good similarities introduced by Balcan et al. to design an algorithm for learning a non PSD linear similarity optimized in a nonlinear feature space, which is then used to build a global linear classifier. We show that our ap...
Part of the 12 best ICDM'10 papers selected for an extended version in in Knowledge and Information ...
In several applications, input samples are more naturally represented in terms of similarities betwe...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceIn recent years, the crucial importance of metrics in machine learning algorit...
In recent years, the crucial importance of metrics in machine learning algorithms has led to an incr...
Similarity and metric learning provides a principled approach to construct a task-specific similarit...
Abstract A good measure of similarity between data points is crucial to many tasks in machine learni...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Abstract—For many data mining and machine learning tasks, the quality of a similarity measure is the...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Being able to measure the similarity between two patterns is an underlying task in many machine lear...
ABSTRACT Calculation of object similarity, for example through a distance function, is a common part...
Learning an appropriate (dis)similarity function from the available data is a central problem in mac...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Leading machine learning techniques rely on inputs in the form of pairwise similarities between obje...
Part of the 12 best ICDM'10 papers selected for an extended version in in Knowledge and Information ...
In several applications, input samples are more naturally represented in terms of similarities betwe...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...
International audienceIn recent years, the crucial importance of metrics in machine learning algorit...
In recent years, the crucial importance of metrics in machine learning algorithms has led to an incr...
Similarity and metric learning provides a principled approach to construct a task-specific similarit...
Abstract A good measure of similarity between data points is crucial to many tasks in machine learni...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Abstract—For many data mining and machine learning tasks, the quality of a similarity measure is the...
International audienceSimilarity and distance functions are essential to many learning algorithms, t...
Being able to measure the similarity between two patterns is an underlying task in many machine lear...
ABSTRACT Calculation of object similarity, for example through a distance function, is a common part...
Learning an appropriate (dis)similarity function from the available data is a central problem in mac...
International audienceThe importance of metrics in machine learning has attracted a growing interest...
Leading machine learning techniques rely on inputs in the form of pairwise similarities between obje...
Part of the 12 best ICDM'10 papers selected for an extended version in in Knowledge and Information ...
In several applications, input samples are more naturally represented in terms of similarities betwe...
International audienceWe address domain adaptation (DA) for binary classification in the challenging...