In this study, we propose a new multi-view stream clustering approach, called MV Split-Merge Clustering. The proposed approach is an extension of an existing split-merge evolutionary clustering algorithm (entitled Split-Merge Clustering) to multi-view data applications. The extended version can be used to integrate data from multiple views in a streaming manner and discover cluster structure for each data chunk. The MV Split-Merge Clustering can be applied for grouping distinct chunks of multi-view streaming data so that a global integrated clustering model is built on each data chunk. At each time window, an updated clustering solution (local model) is initially produced on each view of the current data chunk by applying the Split-Merge Cl...
Short session: Clustering 3 (DM806)International audienceIn many applications, entities of the domai...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
A key problem within data mining is clustering of data streams. Most existing algorithms for data st...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
Data has become an integral part of our society in the past years, arriving faster and in larger qua...
Abstract. Data streams have recently attracted attention for their applicability to numerous domains...
Background. In many smart monitoring applications, such as smart healthcare, smart building, autonom...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
"In recent years, data streams analysis has gained a lot of attention due to the growth of applicati...
While the existing multi-view affinity propagation (AP)-based clustering method inevitably works wit...
This paper proposes a novel multi-stream clustering algorithm, MultiStream EvolveCluster (MS-EC), th...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
The ability to build more robust clustering from many clustering models with different solutions is ...
International audienceMultiview data, which represent distinct but related groupings of variables, c...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
Short session: Clustering 3 (DM806)International audienceIn many applications, entities of the domai...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
A key problem within data mining is clustering of data streams. Most existing algorithms for data st...
The amount of data generated is on rise due to increased demand for fields like IoT, smart monitorin...
Data has become an integral part of our society in the past years, arriving faster and in larger qua...
Abstract. Data streams have recently attracted attention for their applicability to numerous domains...
Background. In many smart monitoring applications, such as smart healthcare, smart building, autonom...
In this paper, a new online evolving clustering approach for streaming data is proposed, named Dynam...
"In recent years, data streams analysis has gained a lot of attention due to the growth of applicati...
While the existing multi-view affinity propagation (AP)-based clustering method inevitably works wit...
This paper proposes a novel multi-stream clustering algorithm, MultiStream EvolveCluster (MS-EC), th...
In data stream clustering, it is desirable to have algorithms that are able to detect clusters of ar...
The ability to build more robust clustering from many clustering models with different solutions is ...
International audienceMultiview data, which represent distinct but related groupings of variables, c...
In this paper we address the problem of modeling the evolution of clusters over time by applying seq...
Short session: Clustering 3 (DM806)International audienceIn many applications, entities of the domai...
Due to recent advances in data collection techniques, massive amounts of data are being collected at...
A key problem within data mining is clustering of data streams. Most existing algorithms for data st...