In this paper we propose a graph stream clustering algorithm with a unied similarity measure on both structural and attribute properties of vertices, with each attribute being treated as a vertex. Unlike others, our approach does not require an input parameter for the number of clusters, instead, it dynamically creates new sketch-based clusters and periodically merges existing similar clusters. Experiments on two publicly available datasets reveal the advantages of our approach in detecting vertex clusters in the graph stream. We provide a detailed investigation into how parameters affect the algorithm performance. We also provide a quantitative evaluation and comparison with a well-known offline community detection algorithm which shows th...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
Abstract. Resources available over the Web are often used in combi-nation to meet a specific need of...
In recent years, a rapidly increasing amount of data is collected and stored for various application...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
Stream data applications have become more and more prominent recently and the requirements for strea...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Abstract: In this paper, we examine the problem of clustering massive graph streams. Graph clusterin...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
In this paper, we address the problem of cor-relation clustering in the dynamic data stream model. T...
Graph clustering is one of the key techniques to understand structures that are present in networks....
International audienceGraph clustering is one of the key techniques to understand structures that ar...
Challenges for clustering streaming data are getting continuously more sophisticated. This trend is ...
As data gathering grows easier, and as researchers discover new ways to interpret data, streaming-da...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
Abstract. Resources available over the Web are often used in combi-nation to meet a specific need of...
In recent years, a rapidly increasing amount of data is collected and stored for various application...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
Stream data applications have become more and more prominent recently and the requirements for strea...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Abstract: In this paper, we examine the problem of clustering massive graph streams. Graph clusterin...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
In this paper, we address the problem of cor-relation clustering in the dynamic data stream model. T...
Graph clustering is one of the key techniques to understand structures that are present in networks....
International audienceGraph clustering is one of the key techniques to understand structures that ar...
Challenges for clustering streaming data are getting continuously more sophisticated. This trend is ...
As data gathering grows easier, and as researchers discover new ways to interpret data, streaming-da...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
We present random sampling algorithms that with probability at least 1 − δ compute a (1 ± ɛ)approxim...
Abstract. Resources available over the Web are often used in combi-nation to meet a specific need of...
In recent years, a rapidly increasing amount of data is collected and stored for various application...