Abstract—The amount of graph-structured data has recently experienced an enormous growth in many applications. To transform such data into useful information, high-performance analytics algorithms and software tools are necessary. One common graph analytics kernel is community detection (or graph clustering). Despite extensive research on heuristic solvers for this task, only few parallel codes exist, although parallelism will be necessary to scale to the data volume of real-world applications. We address the deficit in computing capability by a flexible and extensible community detection framework with shared-memory parallelism. Within this framework we design and implement efficient parallel community detection heuristics: A parallel labe...
Abstract—Many networks display community structure which identifies groups of nodes within which con...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
Accelerating sequential algorithms in order to achieve high performance is often a nontrivial task. ...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
AbstractCommunity detection has become a fundamental operation in numerous graph-theoretic applicati...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Community detection has become a fundamental operation in numerous graph-theoretic applications. It ...
Community detection (or clustering) in large-scale graph is an important problem in graph mining. Co...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Abstract—The volume of existing graph-structured data requires improved parallel tools and algorithm...
Thesis (Ph.D.), Computer Science, Washington State UniversityScientific fields nowadays have adopted...
Parallel computing plays a crucial role in processing large-scale graph data. Complex network analys...
Abstract—Many networks display community structure which identifies groups of nodes within which con...
Abstract—Many networks display community structure which identifies groups of nodes within which con...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
Accelerating sequential algorithms in order to achieve high performance is often a nontrivial task. ...
Community detection, also named as graph clustering, is essential to various graph analysis applicat...
AbstractCommunity detection has become a fundamental operation in numerous graph-theoretic applicati...
Abstract. Tackling the current volume of graph-structured data requires parallel tools. We extend ou...
Abstract. Tackling the current volume of graph-structured data re-quires parallel tools. We extend o...
Community detection has become a fundamental operation in numerous graph-theoretic applications. It ...
Community detection (or clustering) in large-scale graph is an important problem in graph mining. Co...
Complex networks analysis is a very popular topic in computer science. Unfortunately this networks, ...
Community detection has arisen as one of the most relevant topics in the field of graph mining, prin...
Abstract—The volume of existing graph-structured data requires improved parallel tools and algorithm...
Thesis (Ph.D.), Computer Science, Washington State UniversityScientific fields nowadays have adopted...
Parallel computing plays a crucial role in processing large-scale graph data. Complex network analys...
Abstract—Many networks display community structure which identifies groups of nodes within which con...
Abstract—Many networks display community structure which identifies groups of nodes within which con...
ABSTRACT Community detection from complex information networks draws much attention from both acade...
Accelerating sequential algorithms in order to achieve high performance is often a nontrivial task. ...