This paper proposes a novel multi-stream clustering algorithm, MultiStream EvolveCluster (MS-EC), that can be used for continuous and distributed monitoring and analysis ofevolving time series phenomena. It can maintain evolving clustering solutions separatelyfor each stream/view and consensus clustering solutions reflecting evolving interrelationsamong the streams. Each stream behavior can be analyzed by different clustering techniques using a distance measure and data granularity that is specially selected for it. Theproperties of the MultiStream EvolveCluster algorithm are studied and evaluated withrespect to different consensus clustering techniques, distance measures, and cluster evaluation measures in synthetic and real-world smart bu...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
This paper proposes a novel multi-stream clustering algorithm, MultiStream EvolveCluster (MS-EC), th...
Data has become an integral part of our society in the past years, arriving faster and in larger qua...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
A simplified clustering algorithm that enables on-line partitioning of data streams is proposed. T...
Background. In many smart monitoring applications, such as smart healthcare, smart building, autonom...
Abstract. Data streams have recently attracted attention for their applicability to numerous domains...
Identification of models from input-output data essentially requires estimation of appropriate clust...
The chapter deals with a recursive clustering algorithm that enables a real time partitioning of da...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
In this study, we propose a new multi-view stream clustering approach, called MV Split-Merge Cluster...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...
Data growth in today’s world is exponential, many applications generate huge amount of data st...
This paper proposes a novel multi-stream clustering algorithm, MultiStream EvolveCluster (MS-EC), th...
Data has become an integral part of our society in the past years, arriving faster and in larger qua...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
A simplified clustering algorithm that enables on-line partitioning of data streams is proposed. T...
Background. In many smart monitoring applications, such as smart healthcare, smart building, autonom...
Abstract. Data streams have recently attracted attention for their applicability to numerous domains...
Identification of models from input-output data essentially requires estimation of appropriate clust...
The chapter deals with a recursive clustering algorithm that enables a real time partitioning of da...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
In this study, we propose a new multi-view stream clustering approach, called MV Split-Merge Cluster...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
As applications generate massive amounts of data streams, the requirement for ways to analyze and cl...
Data growth in today’s world is exponential, many applications generate huge amount of data st...