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A Hybrid Approach to Clinical Question Answering
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In: DTIC (2014)
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Towards a Simple and Efficient Web Search Framework
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In: DTIC (2014)
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Distributed Non-Parametric Representations for Vital Filtering: UW at TREC KBA 2014
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In: DTIC (2014)
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Modelling Psychological Needs for User-dependent Contextual Suggestion
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In: DTIC (2014)
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6 |
Making Semantic Information Work Effectively for Degraded Environments
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In: DTIC (2013)
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Accelerating Exploitation of Low-grade Intelligence through Semantic Text Processing of Social Media
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In: DTIC (2013)
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8 |
QUT Para at TREC 2012 Web Track: Word Associations for Retrieving Web Documents
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In: DTIC (2012)
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9 |
Adding a Capability to Extract Sentiment from Text Using HanDles
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In: DTIC (2012)
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Speaker Clustering for a Mixture of Singing and Reading (Preprint)
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In: DTIC (2012)
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Horizontal Integration of Warfighter Intelligence Data: A Shared Semantic Resource for the Intelligence Community
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In: DTIC (2012)
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SAWUS: Siena's Automatic Wikipedia Update System
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In: DTIC (2012)
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CSSG: Learning within NLP Pipelines for Scalable Data Mining and Information Extraction
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In: DTIC (2011)
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Entity List Completion Using Set Expansion Techniques
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In: DTIC (2011)
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Abstract:
Set expansion refers to expanding a partial set of "seed" objects into a more complete set. In this paper, we focus on relation and list extraction techniques to perform Entity List Completion task through a two stage retrieval process. First stage takes given query entity and target entity examples as seeds and does set expansion. In second stage, only those candidates who have valid URI in Billion Triple dataset are ranked according to type match with given types. First stage of this system focuses on the recall while second stage tries to improve precision of the outputted list. We submitted the results on the Web as well as ClueWeb09 corpus. ; Presented at the Text REtrieval Conference (TREC 2010) (19th) held in Gaithersburg, Maryland on 16-19 November 2010. Published in the Proceedings of the Text REtrieval Conference (TREC 2010) (19th), 2010. Sponsored in part by the National Institute of Standards and Technology (NIST) and the Advanced Research and Development Activity (ARDA).
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Keyword:
*INFORMATION RETRIEVAL; EXTRACTION; Information Science; PRECISION; RANKING; RECALL; SEMANTICS; SYMPOSIA
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URL: http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA546562 http://www.dtic.mil/docs/citations/ADA546562
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15 |
Related Entity Finding: University of Waterloo at TREC 2010 Entity Track
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In: DTIC (2010)
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Enhancing a Web Crawler with Arabic Search Capability
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In: DTIC (2010)
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17 |
Extrinsic Evaluation of Automated Information Extraction Programs
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In: DTIC (2010)
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A Novel Framework for Related Entities Finding: ICTNET at TREC 2009 Entity Track
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In: DTIC (2009)
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Relevance Feedback based on Constrained Clustering: FDU at TREC 09
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In: DTIC (2009)
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