In view of the importance of various components and asynchronous shapes of multivariate time series, a clustering method based on dynamic time warping and affinity propagation is proposed. From the two perspectives of the global and local properties information of multivariate time series, the relationship between the data objects is described. It uses dynamic time warping to measure the similarity between original time series data and obtain the similarity between the corresponding components. Moreover, it also uses the affinity propagation to cluster based on the similarity matrices and, respectively, establishes the correlation matrices for various components and the whole information of multivariate time series. In addition, we further ...
Clustering methods are used routinely to form groups of objects with similar characteristics. Collec...
Clustering time series data is of great significance since it could extract meaningful statistics an...
Clustering multivariate time series data has been a challenging task for researchers since data has ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
distance Abstract. In terms of existing time series clustering method based on Euclidean distance me...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
International audienceMost time-series clustering methods, such as k-means or k-medoids, are initial...
Following a nonparametric approach, we suggest a time series clustering method. Our clustering appro...
Following a nonparametric approach, we suggest a time-series clustering method. Our clustering appro...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
In this paper, we propose a new approach for clustering time series with time varying parameters. B...
This paper proposes a clustering approach for multivariate time series with time- varying parameter...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
Time series events clustering is the basis of studying the classification of events and mining analy...
Clustering methods are used routinely to form groups of objects with similar characteristics. Collec...
Clustering time series data is of great significance since it could extract meaningful statistics an...
Clustering multivariate time series data has been a challenging task for researchers since data has ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
distance Abstract. In terms of existing time series clustering method based on Euclidean distance me...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
International audienceMost time-series clustering methods, such as k-means or k-medoids, are initial...
Following a nonparametric approach, we suggest a time series clustering method. Our clustering appro...
Following a nonparametric approach, we suggest a time-series clustering method. Our clustering appro...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
In this paper, we propose a new approach for clustering time series with time varying parameters. B...
This paper proposes a clustering approach for multivariate time series with time- varying parameter...
In finance, cluster analysis is a tool particularly useful for classifying stock market multivariate...
Time series events clustering is the basis of studying the classification of events and mining analy...
Clustering methods are used routinely to form groups of objects with similar characteristics. Collec...
Clustering time series data is of great significance since it could extract meaningful statistics an...
Clustering multivariate time series data has been a challenging task for researchers since data has ...