This paper investigates meta structures, schema-level graphs that abstract connectivity information among a set of entities in a knowledge graph. Meta structures are useful in a variety of knowledge discovery tasks ranging from relatedness explanation to data retrieval. We formalize the meta structure computation problem and devise efficient automata-based algorithms. We introduce a meta structure-based relevance measure, which can retrieve entities related to those in input. We implemented our machineries in a visual tool called MEKoNG. We report on an extensive experimental evaluation, which confirms the suitability of our proposal from both the efficiency and effectiveness point of view.
Meta structures in knowledge graphs
Fionda, Valeria;PIRRO', GIUSEPPE
2017-01-01
Abstract
This paper investigates meta structures, schema-level graphs that abstract connectivity information among a set of entities in a knowledge graph. Meta structures are useful in a variety of knowledge discovery tasks ranging from relatedness explanation to data retrieval. We formalize the meta structure computation problem and devise efficient automata-based algorithms. We introduce a meta structure-based relevance measure, which can retrieve entities related to those in input. We implemented our machineries in a visual tool called MEKoNG. We report on an extensive experimental evaluation, which confirms the suitability of our proposal from both the efficiency and effectiveness point of view.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.