Over the last several years, graph mining has emerged as a new field within contemporary data mining. One of the central tasks is the search for subgraphs, called patterns, that occur frequently in either a collection of graphs (e.g. databases of molecules [6], game positions [15], scene descriptions) or in a single large graph (e.g. the Internet, citation networks [16], social networks [12], protein interaction networks [10]). In the literature, the terms frequency and support have been used interchangeably to denote the measure to quantify the prevalence of a pattern. In the single-graph setting, however, the notion of frequency is not at all straightforward to define. For example, the obvious definition of taking the number of instances ...
Abstract. Graph support measures are functions measuring how fre-quently a given subgraph pattern oc...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
In this chapter we will discuss measures for the frequency of graph patterns in a single large graph...
In recent years, the popularity of graph datasets has grown rapidly. Frequent subgraph mining (FSM) ...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
The central task in graph mining is to find subgraphs, called patterns that occur frequently in eith...
In graph mining, a frequency measure is anti-monotonic if the frequency of a pattern never exceeds t...
In graph mining, a frequency measure is anti-monotonic if the frequency of a pattern never exceeds t...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a g...
In graph mining, a frequency measure for graphs is anti-monotonic if the frequency of a pattern neve...
Frequent graph mining has been proposed to find interesting patterns (i.e., frequent sub-graphs) fro...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
Frequent graph pattern mining is one of the most interesting areas in data mining, and many research...
Abstract. Graph support measures are functions measuring how fre-quently a given subgraph pattern oc...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
In this chapter we will discuss measures for the frequency of graph patterns in a single large graph...
In recent years, the popularity of graph datasets has grown rapidly. Frequent subgraph mining (FSM) ...
In recent years, the popularity of graph databases has grown rapidly. This paper focuses on single-g...
The central task in graph mining is to find subgraphs, called patterns that occur frequently in eith...
In graph mining, a frequency measure is anti-monotonic if the frequency of a pattern never exceeds t...
In graph mining, a frequency measure is anti-monotonic if the frequency of a pattern never exceeds t...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Graph support measures are functions measuring how frequently a given subgraph pattern occurs in a g...
In graph mining, a frequency measure for graphs is anti-monotonic if the frequency of a pattern neve...
Frequent graph mining has been proposed to find interesting patterns (i.e., frequent sub-graphs) fro...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
Frequent graph pattern mining is one of the most interesting areas in data mining, and many research...
Abstract. Graph support measures are functions measuring how fre-quently a given subgraph pattern oc...
Large graphs are often used to simulate and model complex systems in variousresearch and application...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...