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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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A Journey in Entity Related Retrieval for TREC 2009
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In: DTIC (2009)
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Lucene for n-grams using the ClueWeb Collection
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In: DTIC (2009)
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BIT at TREC 2009 Faceted Blog Distillation Task
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In: DTIC (2009)
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IRRA at TREC 2009: Index Term Weighting based on Divergence From Independence Model
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In: DTIC (2009)
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POSTECH at TREC 2009 Blog Track: Top Stories Identification
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In: DTIC (2009)
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PRIS at 2009 Relevance Feedback track: Experiments in Language Model for Relevance Feedback
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In: DTIC (2009)
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Experiments on Related Entity Finding Track at TREC 2009
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In: DTIC (2009)
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Facet Classification of Blogs: Know-Center at the TREC 2009 Blog Distillation Task
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In: DTIC (2009)
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Comparing Evaluation Metrics for Sentence Boundary Detection
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In: DTIC (2007)
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Measuring Translation Quality by Testing English Speakers with a New Defense Language Proficiency Test for Arabic
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In: DTIC (2005)
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Measuring Human Readability of Machine Generated Text: Three Case Studies in Speech Recognition and Machine Translation
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In: DTIC (2005)
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Uses of the Diagnostic Rhyme Test (English Version) for Predicting the Effects of Communicators' Linguistic Backgrounds on Voice Communications in English: An Exploratory Study
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In: DTIC (2000)
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The Bible, Truth, and Multilingual OCR Evaluation
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In: DTIC (1998)
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Tipster Shogun System (Joint GE-CMU): MUC-4 Test Results and Analysis
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In: DTIC (1992)
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GE-CMU: Description of the Tipster/Shogun System as Used for MUC-4
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In: DTIC (1992)
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BBN PLUM: MUC-4 Test Results and Analysis
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In: DTIC (1992)
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Abstract:
Our mid-term to long-term goals in data extraction from text for the next one to three years are to achieve much greater portability to new languages and new domains, greater robustness, and greater scalability. The novel aspect to our approach is the use of learning algorithms and probabilistic models to learn the domain-specific and language. specific knowledge necessary for a new domain and new language. Learning algorithms should contribute to scalability by making it feasible to deal with domains where it would be infeasible to invest sufficient human effort to bring a system up. Probabilistic models can contribute to robustness by allowing for words, constructions, and forms not anticipated ahead of time and by looking for the most likely interpretation in context. We began this research agenda approximately two years ago. During the last twelve months, we have focused much of our effort on porting our data extraction system (PLUM) to a new language (Japanese) and to two new domains. During the next twelve months, we anticipate porting PLUM to two or three additional domains. For any group to participate in MUC is a significant investment. To be consistent with our mid-term and long- term goals, we imposed the following constraints on ourselves in participating in MUC-4: * We would focus our effort on semi-automatically acquired knowledge. * We would minimize effort on handcrafted knowledge, and most generally. * We would minimize MUC-specific effort. Though the three self-imposed constraints meant our overall scores on the objective evaluation were not as high as if we had focused on handtuning and handcrafting the knowledge bases, MUC-4 became a vehicle for evaluating our progress on the long-term goals. ; Presented at the Message Understanding Conference (4th) (MUC-4), held in McLean, VA on 16-18 June 1992. Pub. in the Proceedings of Message Understanding Conference (4th) (MUC-4), 1992. Paper 92-1007. Sponsored in part by the Defense Advanced Research Projects Agency (DARPA).
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Keyword:
*INFORMATION RETRIEVAL; *KNOWLEDGE BASED SYSTEMS; *LANGUAGE TRANSLATION; *MATHEMATICAL MODELS; *MESSAGE UNDERSTANDING; *PROBABILISTIC LANGUAGE UNDERSTANDING MODELS; *TEXT PROCESSING; ALGORITHMS; COMPUTATIONAL LINGUISTICS; Cybernetics; GRAMMARS; Information Science; JAPANESE LANGUAGE; LEARNING ALGORITHMS; Linguistics; MARKOV MODELS; PARSERS; PARTIAL UNDERSTANDING; PLUM(PROBABILISTIC LANGUAGE UNDERSTANDING MODEL); PRECISION; PROBABILITY; RECALL; STATISTICAL ALGORITHMS; SYMPOSIA; TEST AND EVALUATION; TEXT CLASSIFICATION
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URL: http://www.dtic.mil/docs/citations/ADA460688 http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA460688
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Overview of the Fourth Message Understanding Evaluation and Conference
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In: DTIC AND NTIS (1992)
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