Clustering is used to gain an intuition of the structures in the data. Most of the current clustering algorithms produce a clustering structure even on data that do not possess such structure. In these cases, the algorithms force a structure in the data instead of discovering one. To avoid false structures in the relations of data, a novel clusterability assessment method called density-based clusterability measure is proposed in this paper. It measures the prominence of clustering structure in the data to evaluate whether a cluster analysis could produce a meaningful insight to the relationships in the data. This is especially useful in time-series data since visualizing the structure in time-series data is hard. The performance of the clu...
Abstract—Data analysis plays an indispensable role for un-derstanding various phenomena. Cluster ana...
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Current time series clustering algorithms fail to effectively mine clustering distribution character...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Doubts have been raised that time series subsequences can be clustered in a meaningful way. This pap...
The general area of this research is data clustering, in which an unsupervised classification proces...
This paper proposes a weight-based self-constructing clustering method for time series data. Self-co...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
Clustering assigns data points into groups called clusters, which define the characteristics of simi...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Abstract—Data analysis plays an indispensable role for un-derstanding various phenomena. Cluster ana...
AbstractTime series data are commonly used in data mining. Clustering is the most frequently used me...
Abstract—Data analysis plays an indispensable role for un-derstanding various phenomena. Cluster ana...
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Current time series clustering algorithms fail to effectively mine clustering distribution character...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
Clustering is an attempt to form groups of similar objects, and it is a powerful tool for discoverin...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Doubts have been raised that time series subsequences can be clustered in a meaningful way. This pap...
The general area of this research is data clustering, in which an unsupervised classification proces...
This paper proposes a weight-based self-constructing clustering method for time series data. Self-co...
Temporal Data Mining is a rapidly evolving and new area of research that is at the intersection of s...
Clustering assigns data points into groups called clusters, which define the characteristics of simi...
Time series data mining is one of the most studied and researched areas. This need in mining time se...
Abstract—Data analysis plays an indispensable role for un-derstanding various phenomena. Cluster ana...
AbstractTime series data are commonly used in data mining. Clustering is the most frequently used me...
Abstract—Data analysis plays an indispensable role for un-derstanding various phenomena. Cluster ana...
Abstract. Predictive clustering is a general framework that unifies clustering and prediction. This ...
Current time series clustering algorithms fail to effectively mine clustering distribution character...