Mining Generalized Graph Patterns based on User Examples
Pavel Dmitriev, Carl Lagoze

TL;DR
This paper introduces a novel method for mining generalized graph patterns based on user-provided examples, overcoming previous assumptions by effectively discovering similar patterns in complex networks.
Contribution
It presents a new approach that does not require predefined cores or frequency assumptions, enabling flexible discovery of generalized patterns from user examples.
Findings
Effective in biological and web data domains
Successfully discovers patterns similar to user examples
Outperforms previous methods under practical conditions
Abstract
There has been a lot of recent interest in mining patterns from graphs. Often, the exact structure of the patterns of interest is not known. This happens, for example, when molecular structures are mined to discover fragments useful as features in chemical compound classification task, or when web sites are mined to discover sets of web pages representing logical documents. Such patterns are often generated from a few small subgraphs (cores), according to certain generalization rules (GRs). We call such patterns "generalized patterns"(GPs). While being structurally different, GPs often perform the same function in the network. Previously proposed approaches to mining GPs either assumed that the cores and the GRs are given, or that all interesting GPs are frequent. These are strong assumptions, which often do not hold in practical applications. In this paper, we propose an approach to…
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Taxonomy
TopicsData Mining Algorithms and Applications · Advanced Database Systems and Queries · Rough Sets and Fuzzy Logic
