TIPSTER TEXT PROGRAM PHASE III: Proceedings of a Workshop held at Baltimore, Maryland, October 13-15, 1998


Anthology ID:
X98-1
Month:
October
Year:
1998
Address:
Baltimore, Maryland, USA
Venue:
TIPSTER
SIG:
Publisher:
Association for Computational Linguistics
URL:
https://aclanthology.org/X98-1/
DOI:
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TIPSTER TEXT PROGRAM PHASE III: Proceedings of a Workshop held at Baltimore, Maryland, October 13-15, 1998

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The TIPSTER Text Program Overview
F. Ruth Gee

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TIPSTER Phase III Accomplishments
F. Ruth Gee

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TIPSTER Lessons Learned: The SE/CM Perspective
Harold Corbin | Aaron Temin

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The Common Pattern Specification Language
Douglas E. Appelt | Boyan Onyshkevych

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Project Penlight - A Government Perspective
Michael J. Chrzanowski

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Project Underline - A Government Perspective
Michael J. Chrzanowski

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The Cornell TIPSTER Phase III Project
F. Ruth Gee

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The SRI TIPSTER III Project
Steven Maiorano

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Reflections of Accomplishments in Natural Language Based Detection and Summarization
Susan R. Viscuso

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Coreference Resolution Strategies From an Application Perspective
Lois C. Childs | David Dadd | Norris Heintzelman

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Extracting and Normalizing Temporal Expressions
Lois C. Childs | David Cassel

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Research in Information Extraction: 1996-98
Ralph Grishman

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Information Extraction Research and Applications: Current Progress and Future Directions
Andrew Kehler | Jerry R. Hobbs | Douglas Appelt | John Bear | Matthew Caywood | David Israel | Megumi Kameyama | David Martin | Claire Monteleoni

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Algorithms That Learn to Extract Information BBN: TIPSTER Phase III
Scott Miller | Michael Crystal | Heidi Fox | Lance Ramshaw | Richard Schwartz | Rebecca Stone | Ralph Weischedel

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Japanese IE System and Customization Tool
Chikashi Nobata | Satoshi Sekine | Roman Yangarber

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Transforming Examples into Patterns for Information Extraction
Roman Yangarber | Ralph Grishman

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The Smart/Empire TIPSTER IR System
Chris Buckley | Janet Walz | Claire Cardie | Scott Mardis | Mandar Mitra | David Pierce | Kiri Wagstaff

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Dynamic Data Fusion
Ted Diamond | Elizabeth D. Liddy

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Improving English and Chinese Ad-Hoc Retrieval: TIPSTER Text Phase 3 Final Report
Kui-Lam Kwok

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Enhancing Detection through Linguistic Indexing and Topic Expansion
Tomek Strzalkowski | Gees C. Stein | G. Bowden Wise

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Overview of the University of Pennsylvania’s TIPSTER Project
Breck Baldwin | Thomas S. Morton | Amit Bagga

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An NTU-Approach to Automatic Sentence Extraction for Summary Generation
Kuang-hua Chen | Sheng-Jie Huang | Wen-Cheng Lin | Hsin-Hsi Chen

Automatic summarization and information extraction are two important Internet services. MUC and SUMMAC play their appropriate roles in the next generation Internet. This paper focuses on the automatic summarization and proposes two different models to extract sentences for summary generation under two tasks initiated by SUMMAC-1. For categorization task, positive feature vectors and negative feature vectors are used cooperatively to construct generic, indicative summaries. For adhoc task, a text model based on relationship between nouns and verbs is used to filter out irrelevant discourse segment, to rank relevant sentences, and to generate the user-directed summaries. The result shows that the NormF of the best summary and that of the fixed summary for adhoc tasks are 0.456 and 0.447. The NormF of the best summary and that of the fixed summary for categorization task are 0.4090 and 0.4023. Our system outperforms the average system in categorization task but does a common job in adhoc task.

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Improving Robust Domain Independent Summarization
Jim Cowie | Eugene Ludovik | Hugo Molina-Salgado

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Automatic Text Summarization in TIPSTER
Therese Firmin | Inderjeet Mani

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Summarization: (1) Using MMR for Diversity- Based Reranking and (2) Evaluating Summaries
Jade Goldstein | Jaime Carbonell

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Automated Text Summarization and the Summarist System
Eduard Hovy | Chin-Yew Lin

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Multiple & Single Document Summarization Using DR-LINK
Mary McKenna | Elizabeth Liddy

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A Text-Extraction Based Summarizer
Tomek Strzalkowski | Gees C. Stein | G. Bowden Wise

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TIPSTER Information Extraction Evaluation: The MUC-7 Workshop
Elaine Marsh

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MUC/MET Evaluation Trends
Nancy A. Chinchor

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The Text REtrieval Conferences (TRECs)
Ellen M. Voorhees | Donna Harman