VoldemortKG: Mapping Schema.org Entities to Linked Open Data

author: Alberto Tonon, eXascale Infolab, University of Fribourg
published: Nov. 10, 2016,   recorded: October 2016,   views: 1442
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Description

Increasingly, webpages mix entities coming from various sources and represented in different ways. It can thus happen that the same entity is both described by using schema.org annotations and by creating a text anchor pointing to its Wikipedia page. Often, those representations provide complementary information which is not exploited since those entities are disjoint. We explored the extent to which entities represented in different ways repeat on the Web, how they are related, and how they complement (or link) to each other. Our initial experiments showed that we can unveil a previously unexploited knowledge graph by applying simple instance matching techniques on a large collection of schema.org annotations and DBpedia. The resulting knowledge graph aggregates entities (often tail entities) scattered across several webpages, and complements existing DBpedia entities with new facts and properties. In order to facilitate further investigation in how to mine such information, we are releasing i) an excerpt of all Common Crawl webpages containing both Wikipedia and schema.org annotations, ii) the toolset to extract this information and perform knowledge graph construction and mapping onto DBpedia, as well as iii) the resulting knowledge graph (VoldemortKG) obtained via label matching techniques.

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Download slides icon Download slides: iswc2016_tonon_mapping_schema_01.pdf (4.4 MB)


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