International audienceEmerging patterns are patterns of great interest for discovering information from data and characterizing classes. Mining emerging patterns remains a challenge, especially with graph data. In this paper, we propose a method to mine the whole set of frequent emerging graph patterns, given a frequency threshold and an emergence threshold. Our results are achieved thanks to a change of the description of the initial problem so that we are able to design a process combining efficient algorithmic and data mining methods. Moreover, we show that the closed graph patterns are a condensed representation of the frequent emerging graph patterns and we propose a new condensed representation based on the representative pruned graph...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
International audienceEmerging patterns are patterns of a great interest for characterizing classes....
International audienceEmerging patterns are patterns of a great interest for characterizing classes....
ABSTRACT: In recent years, graph mining has attracted much attention in the data mining community. S...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Abstract—Most of graph pattern mining algorithms focus on finding frequent subgraphs and its compact...
Abstract. Nowadays, there has been a meaningful increase in the use of frequent approximate subgraph...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
This paper introduces a new type of discriminative subgraph pattern called breaker emerging subgraph...
Mining frequent structural patterns from graph databases is an important research problem with broad...
We introduce a new kind of patterns, called emerging patterns (EPs), for knowledge discovery from da...
[[abstract]]Graph is a kind of structural data, which is applied to model the various relations amon...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
International audienceEmerging patterns are patterns of a great interest for characterizing classes....
International audienceEmerging patterns are patterns of a great interest for characterizing classes....
ABSTRACT: In recent years, graph mining has attracted much attention in the data mining community. S...
Abstract. The main practical problem encountered with frequent subgraph search methods is the tens o...
Abstract—Most of graph pattern mining algorithms focus on finding frequent subgraphs and its compact...
Abstract. Nowadays, there has been a meaningful increase in the use of frequent approximate subgraph...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
This paper introduces a new type of discriminative subgraph pattern called breaker emerging subgraph...
Mining frequent structural patterns from graph databases is an important research problem with broad...
We introduce a new kind of patterns, called emerging patterns (EPs), for knowledge discovery from da...
[[abstract]]Graph is a kind of structural data, which is applied to model the various relations amon...
In this paper we introduce graph-evolution rules, a novel type of frequency-based pattern that descr...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...
A majority of the existing algorithms which mine graph datasets target complete, frequent sub-graph ...