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In this paper, we used semi-Conditional Random Fields (semi-CRFs) model, a conditionally trained version of semi-Markov chains for sequence labeling. It is a valid probabilistic model to segment and label sequence data. The key advantage of semi-CRFs over hidden Markov models is their conditional nature, resulting in the relaxation of the independence assumptions required by HMMs in order to ensure tractable inference. Additionally, semi-CRFs avoid the label bias problem, a weakness exhibited by maximum entropy Markov models and other conditional Markov models based on directed graphical models. Experimental results show that the semi-CRFs outperform on real-world sequence labeling tasks. Copyright © 2010 Binary Information Press May, 2010.
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Journal of Computational Information Systems
ISSN: 1553-9105
Year: 2010
Issue: 5
Volume: 6
Page: 1637-1642
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 1