Mallowsʼ L2 distance allows for decomposition of total inertia into within and between inertia according to Huygens theorem. It can be decomposed into three terms: the location term, the spread term and the shape terma simple and straightforward proof of this theorem is presented. These characteristics are very helpful in the interpretation of the results for some distance-based methods, such as clustering by k-means and classical multidimensional scaling. For histogram-type data, Mallowsʼ L2 distance is preferable because its calculation is simple, even when the number and length of the histogramsʼ subintervals differ. An illustration of its use on population pyramids for 14 East European countries in the period 1995-2015 is presented. The...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...
In this paper, we present a new distance for comparing data described by histograms. The distance is...
There are many distance-based methods for classification and clustering, and for data with a high n...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
The concept of distance is a fundamental notion that forms a basis for the orientation in space. It ...
Numerous methods of multivariate statistics and data mining suffer from the presence of outlying mea...
Many data sets in practice fit a multivariate analysis of variance (MANOVA) structure but are not co...
Abstract. The paper deals with a simulation study of one of the well-known hierarchical cluster anal...
There are efficient software programs for extracting from image sequences certain mixtures of distri...
A histogram of a set with respect a measurement represents the frequency of quantified values of tha...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
Abstract—This paper focuses on an important query in scientific simulation data analysis: the Spatia...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...
In this paper, we present a new distance for comparing data described by histograms. The distance is...
There are many distance-based methods for classification and clustering, and for data with a high n...
In the present paper we present a new distance, based on the Wasserstein metric, in order to cluster...
Symbolic Data Analysis (SDA) aims to to describe and analyze complex and structured data extracted, ...
The concept of distance is a fundamental notion that forms a basis for the orientation in space. It ...
Numerous methods of multivariate statistics and data mining suffer from the presence of outlying mea...
Many data sets in practice fit a multivariate analysis of variance (MANOVA) structure but are not co...
Abstract. The paper deals with a simulation study of one of the well-known hierarchical cluster anal...
There are efficient software programs for extracting from image sequences certain mixtures of distri...
A histogram of a set with respect a measurement represents the frequency of quantified values of tha...
In this paper we study the main properties of a distance introduced by C.M. Cuadras (1974). This dis...
Abstract—This paper focuses on an important query in scientific simulation data analysis: the Spatia...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
In this paper, the problem of clustering rotationally invariant shapes is studied and a solution usi...
where a and b are twomultivariate observations, Σ− is the inverse of the variance-covariance matrix...