There are e cient software programs for extracting from large data sets and imagesequences certain mixtures of probability distributions, such as multivariate Gaussians, to representthe important features and their mutual correlations needed for accurate document retrieval fromdatabases. This note describes a method to use information geometric methods for distance measuresbetween distributions in mixtures of arbitrary multivariate Gaussians. There is no general analyticsolution for the information geodesic distance between two k-variate Gaussians, but for many purposesthe absolute information distance may not be essential and comparative values su ce for proximitytesting and document retrieval. Also, for two mixtures of di erent multivaria...
The construction of a distance function between probability distributions is of importance in mathem...
We introduce two new information theoretic measures of distances among probability distributions and...
Distance metric is widely used in similarity estimation. In this paper we find that the most popular...
There are efficient software programs for extracting from large data sets and image sequences certa...
In this paper, we propose a novel method to measure the distance between two Gaussian Mixture Models...
Abstract. In this paper we propose a new distance metric for probability den-sity functions (PDF). T...
International audienceThe majority of all commonly used machine learning methods can not be applied ...
Mixtures of Gaussian (or normal) distributions arise in a variety of application areas. Many heurist...
Inferring and comparing complex, multivariable probability density functions is fundamental to probl...
Mixture distributions arise in many parametric and non-parametric settings—for example, in Gaussian ...
Multivariate Gaussian densities are pervasive in pattern recognition and machine learning. A central...
In many practical applications, the data is organized along a manifold of lower dimension than the d...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
Information geometry studies the measurements of intrinsic information based on the mathematical dis...
The construction of a distance function between probability distributions is of importance in mathem...
We introduce two new information theoretic measures of distances among probability distributions and...
Distance metric is widely used in similarity estimation. In this paper we find that the most popular...
There are efficient software programs for extracting from large data sets and image sequences certa...
In this paper, we propose a novel method to measure the distance between two Gaussian Mixture Models...
Abstract. In this paper we propose a new distance metric for probability den-sity functions (PDF). T...
International audienceThe majority of all commonly used machine learning methods can not be applied ...
Mixtures of Gaussian (or normal) distributions arise in a variety of application areas. Many heurist...
Inferring and comparing complex, multivariable probability density functions is fundamental to probl...
Mixture distributions arise in many parametric and non-parametric settings—for example, in Gaussian ...
Multivariate Gaussian densities are pervasive in pattern recognition and machine learning. A central...
In many practical applications, the data is organized along a manifold of lower dimension than the d...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
In this paper, we present an information-theoretic approach to learning a Mahalanobis distance funct...
Information geometry studies the measurements of intrinsic information based on the mathematical dis...
The construction of a distance function between probability distributions is of importance in mathem...
We introduce two new information theoretic measures of distances among probability distributions and...
Distance metric is widely used in similarity estimation. In this paper we find that the most popular...