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1
RMIT University at TREC 2009: Web Track
In: DTIC (2009)
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2
A Novel Framework for Related Entities Finding: ICTNET at TREC 2009 Entity Track
In: DTIC (2009)
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3
Recognizing Connotative Meaning in Military Chat Communications
In: DTIC (2009)
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4
Metacognitive Awareness versus Linguistic Politeness: Expressions of Confusion in Tutorial Dialogues
In: DTIC (2009)
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5
Relevance Feedback based on Constrained Clustering: FDU at TREC 09
In: DTIC (2009)
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6
Translation Memory Technology Assessment
In: DTIC (2009)
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7
A Journey in Entity Related Retrieval for TREC 2009
In: DTIC (2009)
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8
ICTNET at Web Track 2009 Diversity task
In: DTIC (2009)
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9
Lucene for n-grams using the ClueWeb Collection
In: DTIC (2009)
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10
BIT at TREC 2009 Faceted Blog Distillation Task
In: DTIC (2009)
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11
Recovering Asynchronous Watermark Tones from Speech
In: DTIC (2009)
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12
Sparse Matrix Factorization: Applications to Latent Semantic Indexing
In: DTIC (2009)
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13
IRRA at TREC 2009: Index Term Weighting based on Divergence From Independence Model
In: DTIC (2009)
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14
Semantic Search
In: DTIC (2009)
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15
Delft University at the TREC 2009 Entity Track: Ranking Wikipedia Entities
In: DTIC (2009)
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16
POSTECH at TREC 2009 Blog Track: Top Stories Identification
In: DTIC (2009)
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17
Entity Retrieval by Hierarchical Relevance Model, Exploiting the Structure of Tables and Learning Homepage Classifiers
In: DTIC (2009)
Abstract: This paper gives an overview of our work done for the TREC 2009 Entity track. We propose a hierarchical relevance retrieval model for entity ranking. In this model, three levels of relevance are examined which are document, passage and entity, respectively. The final ranking score is a linear combination of the relevance scores from the three levels. Furthermore, we exploit the structure of tables and lists to identify the target entities from them by making a joint decision on all the entities with the same attribute. To find entity homepages, we train logistic regression models for each type of entities. A set of templates and filtering rules are also used to identify target entities. The key lessons that we learned by participating this year's Entity track include: 1) our special treatment of table and list data is well rewarding; 2) The high accuracy of homepage finding is crucial in this track; 3) Wikipedia can serve as a valuable knowledge resource for different aspects of the related entity finding task. ; Presented at the Text REtrieval Conference (TREC 2009, 18th) held in Gaithersburg, Maryland on 17-20 November 2009. Published in the Proceedings of the Text REtrieval Conference (TREC 2009, 18th), 2009. The conference was co-sponsored by the National Institute of Standards and Technology (NIST), the Defense Advanced Research Projects Agency (DARPA), and the Advanced Research and Development Activity (ARDA).
Keyword: *HOMEPAGES(INTERNET); *INFORMATION RETRIEVAL; *INFORMATION SCIENCES; *INTERNET; *RELEVANCE(INFORMATION RETRIEVAL); *WEB(INTERNET); ACCURACY; CLASSIFICATION; Computer Programming and Software; DECISION MAKING; DOCUMENT RETRIEVAL; ENTITY EXTRACTION; ENTITY RANKING; ENTITY TRACK; Equipment and Methods; FILTERS; HIERARCHIES; HIGH RATE; Information Science; INTERNET BROWSERS; LEARNING; Linguistics; MODELS; RANKING; REGRESSION ANALYSIS; REPRINTS; SOCIAL COMMUNICATION; SYMPOSIA; TABLES(DATA); TEMPLATES; Test Facilities; WIKIPEDIA(INTERNET)
URL: http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA517741
http://www.dtic.mil/docs/citations/ADA517741
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18
University of Padua at TREC 2009: Relevance Feedback Track
In: DTIC (2009)
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19
Related Entity Finding Based on Co-Occurrence
In: DTIC (2009)
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20
Result Diversity and Entity Ranking Experiments: Anchors, Links, Text and Wikipedia
In: DTIC (2009)
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