SPARK: Adapting Keyword Query to Semantic Search
Description
Semantic search promises to provide more accurate result
than present-day keyword search. However, progress with semantic search
has been delayed due to the complexity of its query languages. In this paper,
we explore a novel approach of adapting keywords to querying the
semantic web: the approach automatically translates keyword queries
into formal logic queries so that end users can use familiar keywords to
perform semantic search. A prototype system named ‘SPARK’ has been
implemented in light of this approach. Given a keyword query, SPARK
outputs a ranked list of SPARQL queries as the translation result. The
translation in SPARK consists of three major steps: term mapping, query
graph construction and query ranking. Specifically, a probabilistic query
ranking model is proposed to select the most likely SPARQL query. In
the experiment, SPARK achieved an encouraging translation result.
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