Usefulness of Temporal Information Automatically Extracted from News Articles for Topic Tracking

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Temporal information plays an important role in natural language processing (NLP) applications such as information extraction, discourse analysis, automatic summarization, and question-answering. In the topic detection and tracking (TDT) area, the temporal information often used is the publication date of a message, which is readily available but limited in its usefulness. We developed a relatively simple NLP method for extracting temporal information from Korean news articles, with the goal of improving performance of TDT tasks. To extract temporal information, we make use of finite state automata and a lexicon containing timerevealing vocabulary. Extracted information is converted into a canonicalized representation of a time point or a time duration. We first evaluated and investigated the extraction and canonicalization methods for their accuracy and the extent to which temporal information extracted as such can help TDT tasks. The experimental results show that time information extracted from the text does indeed help to significantly improve both precision and recall.
Publisher
Association for Computing Machinery (ACM)
Issue Date
2004
Keywords

Design; Experimentation; Performance; temporal information extraction; event detection and tracking

Citation

ACM Transactions on Asian Language Information Processing (TALIP), Vol.3, No.4, pp.227-242

ISSN
1530-0226
DOI
10.1145/1039621.1039624
URI
http://hdl.handle.net/10203/16882
Link
http://portal.acm.org/ft_gateway.cfm?id=1039624&type=pdf&coll=GUIDE&dl=GUIDE&CFID=80110241&CFTOKEN=19573864
Appears in Collection
CS-Conference Papers(학술회의논문)

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