Graph Pattern-based Association Rules Evaluated Under No-repeated-anything Semantics in the Graph Transactional Setting
By: Basil Ell
Potential Business Impact:
Finds hidden connections in complex data.
We introduce graph pattern-based association rules (GPARs) for directed labeled multigraphs such as RDF graphs. GPARs support both generative tasks, where a graph is extended, and evaluative tasks, where the plausibility of a graph is assessed. The framework goes beyond related formalisms such as graph functional dependencies, graph entity dependencies, relational association rules, graph association rules, multi-relation and path association rules, and Horn rules. Given a collection of graphs, we evaluate graph patterns under no-repeated-anything semantics, which allows the topology of a graph to be taken into account more effectively. We define a probability space and derive confidence, lift, leverage, and conviction in a probabilistic setting. We further analyze how these metrics relate to their classical itemset-based counterparts and identify conditions under which their characteristic properties are preserved.
Similar Papers
A New Graph Grammar Formalism for Robust Syntactic Pattern Recognition
Formal Languages and Automata Theory
Finds hidden patterns in messy pictures.
A Graph Machine Learning Approach for Detecting Topological Patterns in Transactional Graphs
Machine Learning (CS)
Finds hidden money crimes using connected data.
A Theorem-Proving-Based Evaluation of Neural Semantic Parsing
Computation and Language
Checks if computer language makes sense logically.