In many applications, the data is of rich structure that can be represented by a hypergraph, where the data items are represented by vertices and the associations among items are represented by hyperedges. Equivalently, we are given an input bipartite graph with two types of vertices: items, and associations (which we refer to as topics). We consider the problem of partitioning the set of items into a given number of parts such that the maximum number of topics covered by a part of the partition is minimized. This is a natural clustering problem, with various applications, e.g. partitioning of a set of information objects such as documents, images, and videos, and load balancing in the context of computation platforms.In this paper, we focu...
Realizing the potential of massively parallel machines requires good solutions to the problem of map...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
10 pagesPartitioning an input graph over a set of workers is a complex operation. Objectives are two...
In many applications, the data is of rich structure that can be represented by a hypergraph, where t...
International audienceMany well-known, real-world problems involve dynamic, interrelated data items....
With recent advances in storage technology, it is now possible to store the vast amounts of data gen...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Partitioning the vertices of a (hyper)graph into k roughly balanced blocks such that few (hyper)edge...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
© 2019, © 2019 Informa UK Limited, trading as Taylor & Francis Group. Graph partitioning is an imp...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We introduce a graph clustering problem motivated by a stream processing application. Input to our p...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Large-scale graph-structured datasets are growing at an increasing rate. Social network graphs are a...
Realizing the potential of massively parallel machines requires good solutions to the problem of map...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
10 pagesPartitioning an input graph over a set of workers is a complex operation. Objectives are two...
In many applications, the data is of rich structure that can be represented by a hypergraph, where t...
International audienceMany well-known, real-world problems involve dynamic, interrelated data items....
With recent advances in storage technology, it is now possible to store the vast amounts of data gen...
International audienceWe introduce a novel algorithm to perform graph clustering in the edge streami...
Partitioning the vertices of a (hyper)graph into k roughly balanced blocks such that few (hyper)edge...
Extracting knowledge by performing computations on graphs is becoming increasingly challenging as gr...
© 2019, © 2019 Informa UK Limited, trading as Taylor & Francis Group. Graph partitioning is an imp...
Many contemporary data sources in a variety of domains can naturally be represented as fully-dynamic...
We introduce a graph clustering problem motivated by a stream processing application. Input to our p...
Balanced graph partitioning in the streaming setting is a key problem to enable scalable and efficie...
Large-scale graph-structured datasets are growing at an increasing rate. Social network graphs are a...
Realizing the potential of massively parallel machines requires good solutions to the problem of map...
In this paper, we consider sparse networks consisting of a finite number of non-overlapping communit...
10 pagesPartitioning an input graph over a set of workers is a complex operation. Objectives are two...