AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence of clustering in p-variate data in the special case when the component covariance matrices are known up to a constant multiplier. For the case of testing one population against a mixture of two populations, tests are derived and shown to be optimal in a certain sense. Some of their distribution properties are derived exactly. Some remarks on the extensions of these tests to mixtures of k ≤ p populations are included. The paper is essentially a formal treatment (in a special case) of some well-known procedures. The methods used in deriving the distribution properties are applicable to a variety of other situations involving mixtures
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
Model based clustering and classification are often based on a finite mixture distribution. The most...
Model based clustering and classification are often based on a finite mixture distribution. The most...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
This paper examines the relative performance of two commonly used clustering methods based on maximu...
Selecting an estimator for the covariance matrix of a regression's parameter estimates is an importa...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
In this work we propose a new two-sample test for clustered data. In order to test the null hypothes...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
This work deals with the classification problem in the case that groups are known and both labeled a...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
Model based clustering and classification are often based on a finite mixture distribution. The most...
Model based clustering and classification are often based on a finite mixture distribution. The most...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
This paper examines the relative performance of two commonly used clustering methods based on maximu...
Selecting an estimator for the covariance matrix of a regression's parameter estimates is an importa...
In this paper we proposed a new statistical test for testing the covariance matrix in one population...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate ...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
In this work we propose a new two-sample test for clustered data. In order to test the null hypothes...
International audienceThis paper deals with nonparametric estimation of conditional den-sities in mi...
This work deals with the classification problem in the case that groups are known and both labeled a...
Clustering is the problem of partitioning data into a finite number, k, of homogeneous and separate...
Model based clustering and classification are often based on a finite mixture distribution. The most...
Model based clustering and classification are often based on a finite mixture distribution. The most...