Existing distance metric learning methods require optimisation to learn a feature space to transform data—this makes them computationally expensive in large datasets. In classification tasks, they make use of class information to learn an appropriate feature space. In this paper, we present a simple supervised dissimilarity measure which does not require learning or optimisation. It uses class information to measure dissimilarity of two data instances in the input space directly. It is a supervised version of an existing data-dependent dissimilarity measure called me. Our empirical results in k-NN and LVQ classification tasks show that the proposed simple supervised dissimilarity measure generally produces predictive accuracy better than or...
This paper presents a dissimilarity-based discriminative framework for learning from data coming in...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Defining a good distance (dissimilarity) measure between patterns is of crucial importance in many c...
Abstract. The aim of this paper is to present a dissimilarity measure strategy by which a new philos...
Nearest neighbor search is a core process in many data mining algorithms. Finding reliable closest m...
A pre-printMeasures of similarity (or dissimilarity) are a key ingredient to many machine learning a...
De0ning a good distance (dissimilarity) measure between patterns is of crucial importance in many cl...
Nearest neighbour search is a core process in many data mining algorithms. Finding reliable closest ...
Application-specific dissimilarity functions can be used for learning from a set of objects represen...
In many real-world applications concerning pattern recognition techniques, it is of utmost importanc...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
Abstract. General dissimilarity-based learning approaches have been proposed for dissimilarity data ...
We study the problem of classification when only a dissimilarity function between objects is accessi...
6 pagesInternational audienceDissimilarities are extremely useful in many real-world pattern classif...
This paper presents a dissimilarity-based discriminative framework for learning from data coming in...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Defining a good distance (dissimilarity) measure between patterns is of crucial importance in many c...
Abstract. The aim of this paper is to present a dissimilarity measure strategy by which a new philos...
Nearest neighbor search is a core process in many data mining algorithms. Finding reliable closest m...
A pre-printMeasures of similarity (or dissimilarity) are a key ingredient to many machine learning a...
De0ning a good distance (dissimilarity) measure between patterns is of crucial importance in many cl...
Nearest neighbour search is a core process in many data mining algorithms. Finding reliable closest ...
Application-specific dissimilarity functions can be used for learning from a set of objects represen...
In many real-world applications concerning pattern recognition techniques, it is of utmost importanc...
International audienceThe Evidential K-Nearest-Neighbor (EK-NN) method provided a global treatment o...
Abstract. General dissimilarity-based learning approaches have been proposed for dissimilarity data ...
We study the problem of classification when only a dissimilarity function between objects is accessi...
6 pagesInternational audienceDissimilarities are extremely useful in many real-world pattern classif...
This paper presents a dissimilarity-based discriminative framework for learning from data coming in...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...