Publication | Open Access
Semantic retrieval for the accurate identification of relational concepts in massive textbases
93
Citations
14
References
2006
Year
Unknown Venue
EngineeringSemantic SearchKnowledge ExtractionIntelligent Information RetrievalSemanticsSemantic WebCorpus LinguisticsSocial SciencesText MiningNatural Language ProcessingInformation RetrievalData ScienceComputational LinguisticsQuery ExpansionBiomedical Text MiningNovel FrameworkKnowledge RetrievalKnowledge DiscoveryAccurate RetrievalSemantic RetrievalRelationship ExtractionMassive TextbasesRelational Concepts
This paper introduces a novel framework for the accurate retrieval of relational concepts from huge texts. Prior to retrieval, all sentences are annotated with predicate argument structures and ontological identifiers by applying a deep parser and a term recognizer. During the run time, user requests are converted into queries of region algebra on these annotations. Structural matching with pre-computed semantic annotations establishes the accurate and efficient retrieval of relational concepts. This framework was applied to a text retrieval system for MEDLINE. Experiments on the retrieval of biomedical correlations revealed that the cost is sufficiently small for real-time applications and that the retrieval precision is significantly improved.
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