PhD Seminar - Sapphire: Querying RDF Data Made SimpleExport this event to calendar

Wednesday, March 8, 2017 12:30 PM EST
Speaker:

Ahmed El-Roby

Abstract:

There is currently a large amount of publicly accessible structured data available as RDF data sets. For example, the Linked Open Data (LOD) cloud now consists of thousands of RDF data sets with over 30 billion triples, and the number and size of the data sets is continuously growing. Many of the data sets in the LOD cloud provide public SPARQL endpoints to allow issuing queries over them. These endpoints enable users to retrieve data using precise and highly expressive SPARQL queries. However, in order to do so, the user must have sufficient knowledge about the data sets that she wishes to query, that is, the structure of data, the vocabulary used within the data set, the exact values of literals, their data types, etc. Thus, while SPARQL is powerful, it is not easy to use. An alternative to SPARQL that does not require as much prior knowledge of the data is some form of keyword search over the structured data. Keyword search queries are easy to use, but inherently ambiguous in describing structured queries.

In this talk, I introduce Sapphire, a framework for querying RDF data that strikes a middle ground between ambiguous keyword search and difficult-to-use SPARQL. Sapphire does not replace either, but utilizes both where they are most effective. Sapphire helps the user construct expressive SPARQL queries that represent her information needs without requiring detailed knowledge about the queried data sets. These queries are then executed over public SPARQL endpoints from the LOD cloud. Sapphire guides the user in the query writing process by showing suggestions of query terms based on the queried data, and by recommending changes to the query based on a predictive user model.

Location 
DC - William G. Davis Computer Research Centre
Room 1331
200 University Avenue West

Waterloo, ON N2L 3G1
Canada

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