Methods for clustering univariate time series often rely on choosing some features relevant for the problem at hand and seeking for clusters according to their measurements, for instance the autoregressive coefficients, spectral measures, time delays at some selected frequencies and special characteristics such as trend, seasonality, etc. In this context some interesting features based on indexes of goodness-of-fit seem worth of special attention. Similar approaches have been suggested for clustering sets of multivariate time series. For example, clusters of regional economies may be formed based on sets of macroeconomic time series for each country. In a multivariate framework, however, the features of interest are more difficult to extra...
Abstract:- This paper presents the time complexity estimation and optimisation of the genetic algori...
The applicability of time series data mining in many different fields has motivated the scientific c...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
Given a set of time series, it is of interest to discover subsets that share similar properties. For...
Time series classification deals with the problem of classification of data that is multivariate in ...
Revised version of the selected paper presented at the biennal meeting of the Classification and Dat...
The clustering of data series was already demonstrated to provide helpful information in several fie...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
We present a new way to find clusters in large vectors of time series by using a measure of similari...
Crisp and fuzzy clustering methods based on a combination of univariate and multivariate wavelet fea...
Clustering is an essential research problem which has received considerable attention in the researc...
The decomposition of high-dimensional multivariate time series (MTS) into a number of low-dimensiona...
An important problem in unsupervised data clustering is how to determine the number of clusters. Her...
Abstract:- This paper presents the time complexity estimation and optimisation of the genetic algori...
The applicability of time series data mining in many different fields has motivated the scientific c...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...
Given a set of time series, it is of interest to discover subsets that share similar properties. For...
Time series classification deals with the problem of classification of data that is multivariate in ...
Revised version of the selected paper presented at the biennal meeting of the Classification and Dat...
The clustering of data series was already demonstrated to provide helpful information in several fie...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
This paper reviews the applications of classical multivariate techniques for discrimination, cluster...
We present a new way to find clusters in large vectors of time series by using a measure of similari...
Crisp and fuzzy clustering methods based on a combination of univariate and multivariate wavelet fea...
Clustering is an essential research problem which has received considerable attention in the researc...
The decomposition of high-dimensional multivariate time series (MTS) into a number of low-dimensiona...
An important problem in unsupervised data clustering is how to determine the number of clusters. Her...
Abstract:- This paper presents the time complexity estimation and optimisation of the genetic algori...
The applicability of time series data mining in many different fields has motivated the scientific c...
Three approaches to partitional clustering using genetic algorithms (GA) are compared with k-means a...