Time-series clustering is one of the most common techniques used to discover similar structures in a dataset with dynamic objects. The main issue in time series clustering lies in the computation of a proper distance. A lot of approaches, based on statistical model parameters or on time series features, have been proposed in the literature. Some clustering approaches do not consider as units the single time series but their projections. In this case, it is very important to define a peculiar distance, taking into account the characteristics of the observations. In this framework, we propose a kMEDOID-type algorithm based on an optimal weighting scheme for multiple distances. The weights, obtained by minimizing the weighted squared distance...
Abstract: Bio-inspired optimization algorithms have been successfully used to solve many problems in...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
This paper proposes a novel and efficient clustering algorithm for probability density functions bas...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
International audienceConstrained clustering is becoming an increasingly popular approach in data mi...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Data clustering has been widely applied in numerous areas in order to pave the way for adequate and ...
Proliferation of temporal data in many domains has generated considerable interest in the analysis a...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
This paper proposes a weight-based self-constructing clustering method for time series data. Self-co...
A new model-free clustering approach for time series is introduced. We combine a probability distanc...
The Fréchet distance is a popular distance measure for curves. We study the problem of clustering ti...
This paper proposes a novel time series forecasting method based on a weighted self-constructing clu...
Time Series clustering is a domain with several applications spanning various fields. The concept of...
Temporal data naturally arise in various emerging applications, such as sensor networks, human mobil...
Abstract: Bio-inspired optimization algorithms have been successfully used to solve many problems in...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
This paper proposes a novel and efficient clustering algorithm for probability density functions bas...
Time series is one of the forms of data presentation that is used in many studies. It is convenient,...
International audienceConstrained clustering is becoming an increasingly popular approach in data mi...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
Data clustering has been widely applied in numerous areas in order to pave the way for adequate and ...
Proliferation of temporal data in many domains has generated considerable interest in the analysis a...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
This paper proposes a weight-based self-constructing clustering method for time series data. Self-co...
A new model-free clustering approach for time series is introduced. We combine a probability distanc...
The Fréchet distance is a popular distance measure for curves. We study the problem of clustering ti...
This paper proposes a novel time series forecasting method based on a weighted self-constructing clu...
Time Series clustering is a domain with several applications spanning various fields. The concept of...
Temporal data naturally arise in various emerging applications, such as sensor networks, human mobil...
Abstract: Bio-inspired optimization algorithms have been successfully used to solve many problems in...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
This paper proposes a novel and efficient clustering algorithm for probability density functions bas...