In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that describe the evolution of large networks over time, at a local level. Given a sequence of snapshots of an evolving graph, we aim at discovering rules describing the local changes occurring in it. Adopting a definition of support based on minimum image we study the problem of extracting patterns whose frequency is larger than a minimum support threshold. Then, similar to the classical association rules framework, we derive graph-evolution rules from frequent patterns that satisfy a given minimum confidence constraint. We discuss merits and limits of alternative definitions of support and confidence, justifying the chosen framework. To evaluate our ...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
\u3cp\u3eThe analysis of the temporal evolution of dynamic networks is a key challenge for understan...
Abstract—Dynamic graphs are used to represent relation-ships between entities that evolve over time....
Discovery of evolution chains Discovery of change patterns Change mining in networked data a b s t r...
Most of the works on learning from networked data assume that the network is static. In this paper w...
Most of the works on learning from networked data assume that the network is static. In this paper w...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
Complex networks have been used successfully in scientific disciplines ranging from sociology to mic...
Abstract. Most of the works on learning from networked data assume that the network is static. In th...
International audienceTo describe the dynamics taking place in networks that structurally change ove...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
The analysis of the temporal evolution of dynamic networks is a key challenge for understanding comp...
\u3cp\u3eThe analysis of the temporal evolution of dynamic networks is a key challenge for understan...
Abstract—Dynamic graphs are used to represent relation-ships between entities that evolve over time....
Discovery of evolution chains Discovery of change patterns Change mining in networked data a b s t r...
Most of the works on learning from networked data assume that the network is static. In this paper w...
Most of the works on learning from networked data assume that the network is static. In this paper w...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
Complex networks have been used successfully in scientific disciplines ranging from sociology to mic...
Abstract. Most of the works on learning from networked data assume that the network is static. In th...
International audienceTo describe the dynamics taking place in networks that structurally change ove...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
A dynamic attributed graph is a graph that changes over time and where each vertex is described usin...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...