Graph mining is a challenging task by itself, and even more so when processing data streams which evolve in real-time. Data stream mining faces hard constraints regarding time and space for processing, and also needs to provide for concept drift detection. In this paper we present a framework for studying graph pattern mining on time-varying streams. Three new methods for mining frequent closed subgraphs are presented. All methods work on coresets of closed subgraphs, compressed representations of graph sets, and maintain these sets in a batch-incremental manner, but use different approaches to address potential concept drift. An evaluation study on datasets comprising up to four million graphs explores the strength and limitations of the p...
| openaire: EC/H2020/654024/EU//SoBigData QC 20180312Given a labeled graph, the frequent-subgraph mi...
In this paper, we focus on dense graph streams, which can be generated in various applications rangi...
Graph-structured data is becoming increasingly abundant in many application domains. Graph mining ai...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
[[abstract]]Graph is a kind of structural data, which is applied to model the various relations amon...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
| openaire: EC/H2020/654024/EU//SoBigData QC 20180312Given a labeled graph, the frequent-subgraph mi...
In this paper, we focus on dense graph streams, which can be generated in various applications rangi...
Graph-structured data is becoming increasingly abundant in many application domains. Graph mining ai...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
Graph mining is a challenging task by itself, and even more so when processing data streams which ev...
[[abstract]]Graph is a kind of structural data, which is applied to model the various relations amon...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
Given a labeled graph, the frequent-subgraph mining (FSM) problem asks to find all the k-vertex subg...
| openaire: EC/H2020/654024/EU//SoBigData QC 20180312Given a labeled graph, the frequent-subgraph mi...
In this paper, we focus on dense graph streams, which can be generated in various applications rangi...
Graph-structured data is becoming increasingly abundant in many application domains. Graph mining ai...