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1
BBN: Description of the PLUM System as Used for MUC-6
In: DTIC (1995)
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2
BBN: Description of the PLUM System as Used for MUC-5
In: DTIC (1993)
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3
BBN's PLUM Probabilistic Language Understanding System
In: DTIC (1993)
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4
A Practical Methodology for the Evaluation of Spoken Language Systems
In: DTIC (1992)
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5
A New Approach to Text Understanding
In: DTIC (1992)
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6
BBN: Description of the PLUM System as Used for MUC-4
In: DTIC (1992)
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7
BBN PLUM: MUC-4 Test Results and Analysis
In: DTIC (1992)
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8
BBN PLUM: MUC-3 Test Results and Analysis
In: DTIC (1991)
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9
BBN: Description of the PLUM System as Used for MUC-3
In: DTIC (1991)
Abstract: Traditional approaches to the problem of extracting data from texts have emphasized handcrafted linguistic knowledge. In contrast, BBN's PLUM system (Probabilistic Language Understanding Model) was developed as part of a DARPA-funded research effort on integrating probabilistic language models with more traditional linguistic techniques. Our research and development goals are * more rapid development of new applications, * the ability to train (and re-train) systems based on user markings of correct and incorrect output, * more accurate selection among interpretations when more than one is found, and * more robust partial interpretation when no complete interpretation can be found. We have previously performed experiments on components of the system with texts from the Wall Street Journal, however, the MUC-3 task is the first end-to-end application of PLUM. MI components except parsing were developed in the last 5 months, and cannot therefore be considered fully mature. The parsing component, the MIT Fast Parser [4], originated outside BBN and has a more extensive history prior to MUC-3. A central assumption of our approach is that in processing unrestricted text for data extraction, a non-trivial amount of the text will not be understood. As a result, all components of PLUM are designed to operate on partially understood input, taking advantage of information when available, and not failing when information is unavailable. ; Presented at the Conference on Message Understanding (3rd) held in San Diego, CA on 21-23 May 1991. Pub. in the Proceedings of the Conference on Message Understanding (3rd), 1991.
Keyword: *INFORMATION RETRIEVAL; *KNOWLEDGE BASED SYSTEMS; *LANGUAGE TRANSLATION; *MATHEMATICAL MODELS; *MESSAGE UNDERSTANDING; *PROBABILISTIC LANGUAGE UNDERSTANDING MODELS; *TEXT PROCESSING; ACCURACY; COMPUTATIONAL LINGUISTICS; COMPUTER ARCHITECTURE; Cybernetics; DATA EXTRACTION; DISCOURSE PROCESSING; Information Science; Linguistics; MACHINE TRANSLATION; PARSERS; PLUM(PROBABILISTIC LANGUAGE UNDERSTANDING MODEL); PROBABILITY; RULE BASED SYSTEMS; SEMANTIC INTERPRETER; SEMANTICS; SYMPOSIA; TEMPLATES; TRAINING
URL: http://www.dtic.mil/docs/citations/ADA460678
http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA460678
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10
Adaptive Natural Language Processing
In: DTIC AND NTIS (1991)
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11
The BBN Spoken Language System
In: DTIC (1989)
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12
Morphology as a computational problem
Dolan, William B. (Mitarb.); Emmorey, Karen (Mitarb.); Cornell, Thomas Longacre (Mitarb.). - Los Angeles : Univ. of California, Dep. of Linguistics, 1988
BLLDB
UB Frankfurt Linguistik
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