Abstract. Graph grammars combine the relational aspect of graphs with the iterative and recursive aspects of string grammars, and thus represent an important next step in our ability to discover knowledge from data. In this paper we describe an approach to learning node replacement graph grammars. This approach is based on previous research in frequent isomorphic subgraphs discovery. We extend the search for frequent subgraphs by checking for overlap among the instances of the subgraphs in the input graph. If subgraphs overlap by one node we propose a node replacement grammar production. We also can infer a hierarchy of productions by compressing portions of a graph described by a production and then infer new productions on the compressed ...
The last few years have seen an increasing interest in mining and learning from graphs. Most work in...
Computer programs that can be expressed in two or more dimensions are typically called visual progra...
Work on probabilistic models of natural language tends to focus on strings and trees, but there is i...
In this paper we describe an approach to learning node replacement graph grammars. This approach is ...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
We describe an algorithm and experiments for inference of edge replacement graph grammars. This meth...
Algorithms for inducing graph grammars from sets of graphs have been proposed before. An important c...
Within the data mining community there has been a lot of interest in mining and learning from graphs...
Grammar inference deals with determining (preferably simple) models/grammars consistent with a set o...
Graph grammars are graph replacement systems and can be therefore regarded as a generalization of we...
Within the data mining community, there has been a lot of interest the last few years in mining and ...
We present an algorithm for the inference of context-free graph grammars from examples. The algorith...
With the abundance of large sets of relational data, methods for analyzing and providing a compact r...
The last few years have seen an increasing interest in mining and learning from graphs. Most work in...
Computer programs that can be expressed in two or more dimensions are typically called visual progra...
Work on probabilistic models of natural language tends to focus on strings and trees, but there is i...
In this paper we describe an approach to learning node replacement graph grammars. This approach is ...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
In this paper we study the inference of node and edge replacement graph grammars. We search for freq...
We describe an algorithm and experiments for inference of edge replacement graph grammars. This meth...
Algorithms for inducing graph grammars from sets of graphs have been proposed before. An important c...
Within the data mining community there has been a lot of interest in mining and learning from graphs...
Grammar inference deals with determining (preferably simple) models/grammars consistent with a set o...
Graph grammars are graph replacement systems and can be therefore regarded as a generalization of we...
Within the data mining community, there has been a lot of interest the last few years in mining and ...
We present an algorithm for the inference of context-free graph grammars from examples. The algorith...
With the abundance of large sets of relational data, methods for analyzing and providing a compact r...
The last few years have seen an increasing interest in mining and learning from graphs. Most work in...
Computer programs that can be expressed in two or more dimensions are typically called visual progra...
Work on probabilistic models of natural language tends to focus on strings and trees, but there is i...