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Expert Systems with Applications
Volume 32, Issue 1, January 2007, Pages 97-102
 
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doi:10.1016/j.eswa.2005.11.022    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2005 Elsevier Ltd All rights reserved.

Mining free-structured information based on hidden Markov models

Brandt TsoCorresponding Author Contact Information, a, E-mail The Corresponding Author and Paul Y. Changa

aGraduate School of Resources Management, National Defense Management College NDU, 150 Ming-An Road, Jong-Ho, Taipei 235, Taiwan

Available online 4 January 2006.

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Abstract

The potentials of hidden Markov models (HMM) in mining free-structured information are investigated in this study. The samples under test are relating to C4ISR information derived from the contents of ‘Forecast International’, which is a web-based database containing free-structured archive of forecast reports about aerospace systems, weapon systems, and military industries. This study focuses on three C4ISR relating target terms, namely, ‘Company’, ‘System types’, and ‘cost’, for information mining analysis. The experiments are performed in two stages. In the first stage, each HMM being built is exclusively serving for one target term information extraction so as to test the HMM fundamental information extraction capability. While in the second stage, the experiment is then extended to resolve a more complex, multiple term extraction issue. The results reveal that, by using HMMs as a basis, the accuracies can all achieve more than 80% for single target term extraction, and 76% in average for multi-term extraction case.

Keywords: Hidden Markov model; Information extraction; Forecast international; C4ISR

Article Outline

1. Introduction
2. HMM theory
3. Model design and accuracy analysis
3.1. HMM design
3.2. Accuracy analysis
4. Experimental results and discussions
5. Concluding remarks
Acknowledgements
References




 
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