This article presents the Optimised Stream clustering algorithm (OpStream), a novel approach to cluster dynamic data streams. The proposed system displays desirable features, such as a low number of parameters and good scalability capabilities to both high-dimensional data and numbers of clusters in the dataset, and it is based on a hybrid structure using deterministic clustering methods and stochastic optimisation approaches to optimally centre the clusters. Similar to other state-of-the-art methods available in the literature, it uses “microclusters” and other established techniques, such as density based clustering. Unlike other methods, it makes use of metaheuristic optimisation to maximise performances during the initialisation phase, ...
International audienceIn this paper, we present a dynamic clustering algorithm that efficiently deal...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
open access articleThis article presents the Optimised Stream clustering algorithm (OpStream), a nov...
This article presents the Optimised Stream clustering algorithm (OpStream), a novel approach to clus...
Abstract Analyzing data streams has received considerable attention over the past decades due to the...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
The file attached to this record is the author's final peer reviewed version.Change is one of the bi...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
Recently as applications produce overwhelming data streams, the need for strategies to analyze and c...
Data stream clustering plays an important role in data stream mining for knowledge extraction. Numer...
A key problem within data mining is clustering of data streams. Most existing algorithms for data st...
A data stream is a continuously arriving sequence of data and clustering data streams requires addit...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Clustering is an important technique in data analysis which can reveal hidden patterns and unknown r...
International audienceIn this paper, we present a dynamic clustering algorithm that efficiently deal...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
open access articleThis article presents the Optimised Stream clustering algorithm (OpStream), a nov...
This article presents the Optimised Stream clustering algorithm (OpStream), a novel approach to clus...
Abstract Analyzing data streams has received considerable attention over the past decades due to the...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
The file attached to this record is the author's final peer reviewed version.Change is one of the bi...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
Recently as applications produce overwhelming data streams, the need for strategies to analyze and c...
Data stream clustering plays an important role in data stream mining for knowledge extraction. Numer...
A key problem within data mining is clustering of data streams. Most existing algorithms for data st...
A data stream is a continuously arriving sequence of data and clustering data streams requires addit...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Clustering is an important technique in data analysis which can reveal hidden patterns and unknown r...
International audienceIn this paper, we present a dynamic clustering algorithm that efficiently deal...
A Few algorithms were actualized by the analysts for performing clustering of data streams. Most of ...
Data growth in today’s world is exponential, many applications generate huge amount of data st...