Abstract—The ways distances are computed or measured enable us to have different representations of the same objects. In this paper we want to discuss possible ways of merging different sources of information given by differently measured dissimilarity representations. We compare here a simple av-eraging scheme [1] with dissimilarity forward selection and other techniques based on the learning of weights of linear and quadratic forms. Our general conclusion is that, although the more advanced forms of combination cannot always lead to better classification accuracies, combining given distance matrices prior to training is always worthwhile. We can thereby suggest which combina-tion schemes are preferable with respect to the problem data. I
Abstract. In this paper, we propose to solve multiple instance learning problems using a dissimilari...
National audienceStatistical pattern recognition traditionally relies on a features based representa...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Abstract. The ways distances are computed (the metric used) or mea-sured (by mean of different sourc...
Abstract—Combining different distance matrices or dissimi-larity representations usually can increas...
In many real-world applications concerning pattern recognition techniques, it is of utmost importanc...
Most pattern recognition tasks can be abstracted to a problem of uti-lizing comparisons between obje...
The k-Nearest Neighbors algorithm can be eas-ily adapted to classify complex objects (e.g. sets, gra...
Defining a good distance (dissimilarity) measure between patterns is of crucial importance in many c...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Application-specific dissimilarity functions can be used for learning from a set of objects represen...
We study the problem of classification when only a dissimilarity function between objects is accessi...
In this paper we present a generalization of classical multidimensional scaling called DISTATIS whic...
This thesis looks into Learning Vector Quantization where multiple distance measures are combined. H...
De0ning a good distance (dissimilarity) measure between patterns is of crucial importance in many cl...
Abstract. In this paper, we propose to solve multiple instance learning problems using a dissimilari...
National audienceStatistical pattern recognition traditionally relies on a features based representa...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
Abstract. The ways distances are computed (the metric used) or mea-sured (by mean of different sourc...
Abstract—Combining different distance matrices or dissimi-larity representations usually can increas...
In many real-world applications concerning pattern recognition techniques, it is of utmost importanc...
Most pattern recognition tasks can be abstracted to a problem of uti-lizing comparisons between obje...
The k-Nearest Neighbors algorithm can be eas-ily adapted to classify complex objects (e.g. sets, gra...
Defining a good distance (dissimilarity) measure between patterns is of crucial importance in many c...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Application-specific dissimilarity functions can be used for learning from a set of objects represen...
We study the problem of classification when only a dissimilarity function between objects is accessi...
In this paper we present a generalization of classical multidimensional scaling called DISTATIS whic...
This thesis looks into Learning Vector Quantization where multiple distance measures are combined. H...
De0ning a good distance (dissimilarity) measure between patterns is of crucial importance in many cl...
Abstract. In this paper, we propose to solve multiple instance learning problems using a dissimilari...
National audienceStatistical pattern recognition traditionally relies on a features based representa...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...