Nowadays, large quantities of graph data can be found in many fields, encoding information about their respective domains. Such data can reveal useful knowledge to the user that analyzes it. However, the size and complexity of real-life datasets hinders their usage by human analysts. To help the users, pattern mining approaches extract frequent local structures, called patterns, from the data, so that they can focus on inferring knowledge from them, instead of analyzing the whole data at once. A well-known problem in pattern mining is the so-called problem of pattern explosion. Even on small datasets, the set of patterns that are extracted by classic pattern mining approaches can be very large in size, and contain many redundancies. In this...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
We introduce a new method for finding network motifs. Subgraphs are motifs when their frequency in t...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
Nowadays, large quantities of graph data can be found in many fields, encoding information about the...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
International audienceGraph pattern mining algorithms ease graph data analysis by extracting recurri...
Nowadays, increasingly more data are available as knowledge graphs (KGs). While this data model supp...
Pattern discovery is a significant field of knowledge discovery in databases. This work deals with m...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
Frequent graph mining has been proposed to find interesting patterns (i.e., frequent sub-graphs) fro...
This is about the Minimum Description Length (MDL) principle applied to pattern mining. The length o...
In this thesis, we study different aspects of pattern mining in binary and numerical tabular dataset...
International audiencePattern mining algorithms allow to extract structures from data to highlight i...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
We introduce a new method for finding network motifs. Subgraphs are motifs when their frequency in t...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...
Nowadays, large quantities of graph data can be found in many fields, encoding information about the...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
International audienceMany graph pattern mining algorithms have been designed to identify recurring ...
International audienceGraph pattern mining algorithms ease graph data analysis by extracting recurri...
Nowadays, increasingly more data are available as knowledge graphs (KGs). While this data model supp...
Pattern discovery is a significant field of knowledge discovery in databases. This work deals with m...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
Frequent graph mining has been proposed to find interesting patterns (i.e., frequent sub-graphs) fro...
This is about the Minimum Description Length (MDL) principle applied to pattern mining. The length o...
In this thesis, we study different aspects of pattern mining in binary and numerical tabular dataset...
International audiencePattern mining algorithms allow to extract structures from data to highlight i...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
We introduce a new method for finding network motifs. Subgraphs are motifs when their frequency in t...
We address the problem of pattern discovery in vertex-attributed graphs. This kind of structure cons...