PROGRAM FOR TUESDAY, SEPTEMBER 25TH, 2018
Days:
previous day
next day
all days
View: session overviewtalk overview
08:30-12:00 Session 56 (RW Summer School)
08:30 | Machine Learning with and for Knowledge Graphs ABSTRACT. Large-scale cross-domain knowledge graphs, such as DBpedia or Wikidata, are some of the most popular and widely used datasets of the Semantic Web. In this paper, we introduce some of the most popular knowledge graphs on the Semantic Web. We discuss how machine learning is used to improve those knowledge graphs, and how they can be exploited as background knowledge in popular machine learning tasks, such as recommender systems. |
16:00-19:30 Session 59 (RW Summer School)
16:00 | Rule Induction and Reasoning over Knowledge Graphs ABSTRACT. Advances in information extraction have enabled the automatic construction of large knowledge graphs (KGs) like DBpedia, Freebase, YAGO and Wikidata. Learning rules from KGs is a crucial task for KG completion, cleaning and curation. This tutorial presents state-of-the-art rule induction methods, recent advances, research opportunities as well as open challenges along this avenue. We put a particular emphasis on the problems of learning exception-enriched rules from highly biased and incomplete data. Finally, we discuss possible extensions of classical rule induction techniques to account for unstructured resources (e.g., text) along with the structured ones. |