This paper presents a new method called the functional distributional clustering algorithm (FDCA) that seeks to identify spatially contiguous clusters and incorporate changes in temporal patterns across overcrowded networks. This method is motivated by a graph-based network composed of sensors arranged over space where recorded observations for each sensor represent a multi-modal distribution. The proposed method is fully non-parametric and generates clusters within an agglomerative hierarchical clustering approach based on a measure of distance that defines a cumulative distribution function over temporal changes for different locations in space. Traditional hierarchical clustering algorithms that are spatially adapted do not typically acc...
Clustering geographical units based on a set of quantitative features observed at several time occa...
Wireless sensor networks have been widely deployed for environment monitoring. The resource-limited ...
A temporal point process is a sequence of points, each representing the occurrence time of an event....
In several environmental applications data are functions of time, essentially continuous, observed a...
"In this paper we propose a dynamic clustering algorithm for partitioning a set of geostatistical. f...
Due to the advances in technology, such as smart phones, general mobile devices, remote sensors, and...
Classification problems of functional data arise naturally in many applications. Several approaches...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
This paper introduces a method for clustering spatially dependent functional data. The idea is to co...
The analysis of big data requires powerful, scalable, and accurate data analytics techniques that th...
"\"This paper proposes a Dynamic Clustering Algorithm as a new regionalization. method for spatial f...
Clustering algorithms attempt the identification of distinct subgroups within heterogeneous data and...
In this paper we propose two clustering strategies for spatially referenced functional data. Both a...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Spatio-temporal clustering is a process of grouping objects based on their spatial and temporal simi...
Clustering geographical units based on a set of quantitative features observed at several time occa...
Wireless sensor networks have been widely deployed for environment monitoring. The resource-limited ...
A temporal point process is a sequence of points, each representing the occurrence time of an event....
In several environmental applications data are functions of time, essentially continuous, observed a...
"In this paper we propose a dynamic clustering algorithm for partitioning a set of geostatistical. f...
Due to the advances in technology, such as smart phones, general mobile devices, remote sensors, and...
Classification problems of functional data arise naturally in many applications. Several approaches...
Large quantities of spatiotemporal (ST) data can be easily collected from various domains such as tr...
This paper introduces a method for clustering spatially dependent functional data. The idea is to co...
The analysis of big data requires powerful, scalable, and accurate data analytics techniques that th...
"\"This paper proposes a Dynamic Clustering Algorithm as a new regionalization. method for spatial f...
Clustering algorithms attempt the identification of distinct subgroups within heterogeneous data and...
In this paper we propose two clustering strategies for spatially referenced functional data. Both a...
In this paper we discuss and compare two clustering strategies: a hierarchical clustering and a dyn...
Spatio-temporal clustering is a process of grouping objects based on their spatial and temporal simi...
Clustering geographical units based on a set of quantitative features observed at several time occa...
Wireless sensor networks have been widely deployed for environment monitoring. The resource-limited ...
A temporal point process is a sequence of points, each representing the occurrence time of an event....