Publication | Closed Access
Named entity recognition in query
377
Citations
34
References
2009
Year
Unknown Venue
Natural Language ProcessingEngineeringInformation RetrievalData ScienceNamed Entity RecognitionEntity DisambiguationTopic ModelComputational LinguisticsKnowledge DiscoveryEntity RecognitionQuery Log DataQuery ModelQuery ExpansionSemantic WebNamed-entity RecognitionCorpus LinguisticsText Mining
This paper addresses the problem of Named Entity Recognition in Query (NERQ), which involves detection of the named entity in a given query and classification of the named entity into predefined classes. NERQ is potentially useful in many applications in web search. The paper proposes taking a probabilistic approach to the task using query log data and Latent Dirichlet Allocation. We consider contexts of a named entity (i.e., the remainders of the named entity in queries) as words of a document, and classes of the named entity as topics. The topic model is constructed by a novel and general learning method referred to as WS-LDA (Weakly Supervised Latent Dirichlet Allocation), which employs weakly supervised learning (rather than unsupervised learning) using partially labeled seed entities. Experimental results show that the proposed method based on WS-LDA can accurately perform NERQ, and outperform the baseline methods.
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