Artículos de revistas
Link prediction using a probabilistic description logic
Fecha
2014-03-11Autor
Revoredo, Kate Cerqueira
Revoredo, Kate Cerqueira
Cozman, Fabio Gagliardi
Institución
Resumen
Due to the growing interest in social networks,
link prediction has received significant attention. Link prediction
is mostly based on graph-based features, with some
recent approaches focusing on domain semantics. We propose
algorithms for link prediction that use a probabilistic
ontology to enhance the analysis of the domain and the
unavoidable uncertainty in the task (the ontology is specified
in the probabilistic description logic crALC). The scalability
of the approach is investigated, through a combination of
semantic assumptions and graph-based features. We evaluate
empirically our proposal, and compare it with standard
solutions in the literature.