Graphs are increasingly important for modelling and analysing connected data sets. Traditionally, graph analytical tools targeted global fixed-point computations, while graph databases focused on simpler transactional read operations such as retrieving the neighbours of a node. However, recent applications of graph processing (such as financial fraud detection and serving personalized recommendations) often necessitate a mix of the two workload profiles. A potential approach to tackle these complex workloads is to formulate graph algorithms in the language of linear algebra. To this end, the recent GraphBLAS standard defines a linear algebraic graph computational model and an API for implementing such algorithms. To investigate its usabilit...
The need for graph computations is evident in a multitude of use cases. To support computations on ...
User profiling plays a key role in adaptive systems on online social networks (OSN). Building user p...
AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Gr...
This paper deals with the advantages of a graphical database over conventional database in terms of ...
This tutorial describes the theoretical background of GraphBLAS. First, we discuss the need for a st...
AbstractMassive datasets are becoming more prevalent. In this paper, we propose an algorithm to proc...
Optimizing linear algebra operations has been a research topic for decades. The compact languag...
In this short paper, we provide an early look at the LDBC Social Network Benchmark's Business Intell...
The Linked Data Benchmark Council (LDBC) is now two years underway and has gathered strong industria...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix based gra...
Graph algorithms can be expressed in terms of linear algebra. GraphBLAS is a library of low-level bu...
Graphs are widely used in large scale social network analysis. Graph mining increasingly important i...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
From social networks to language modeling, the growing scale and importance of graph data has driven...
Thinking Like A Vertex (TLAV) is a popular computational paradigm suitable to express many distribut...
The need for graph computations is evident in a multitude of use cases. To support computations on ...
User profiling plays a key role in adaptive systems on online social networks (OSN). Building user p...
AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Gr...
This paper deals with the advantages of a graphical database over conventional database in terms of ...
This tutorial describes the theoretical background of GraphBLAS. First, we discuss the need for a st...
AbstractMassive datasets are becoming more prevalent. In this paper, we propose an algorithm to proc...
Optimizing linear algebra operations has been a research topic for decades. The compact languag...
In this short paper, we provide an early look at the LDBC Social Network Benchmark's Business Intell...
The Linked Data Benchmark Council (LDBC) is now two years underway and has gathered strong industria...
The GraphBLAS standard (GraphBlas.org) is being developed to bring the potential of matrix based gra...
Graph algorithms can be expressed in terms of linear algebra. GraphBLAS is a library of low-level bu...
Graphs are widely used in large scale social network analysis. Graph mining increasingly important i...
Online Social Networks (OSNs) have become prevalent in people’s daily life. Facebook, Twitter, and I...
From social networks to language modeling, the growing scale and importance of graph data has driven...
Thinking Like A Vertex (TLAV) is a popular computational paradigm suitable to express many distribut...
The need for graph computations is evident in a multitude of use cases. To support computations on ...
User profiling plays a key role in adaptive systems on online social networks (OSN). Building user p...
AbstractThe analysis of graphs has become increasingly important to a wide range of applications. Gr...