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ACL
2003

Self-Organizing Markov Models and Their Application to Part-of-Speech Tagging

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Self-Organizing Markov Models and Their Application to Part-of-Speech Tagging
This paper presents a method to develop a class of variable memory Markov models that have higher memory capacity than traditional (uniform memory) Markov models. The structure of the variable memory models is induced from a manually annotated corpus through a decision tree learning algorithm. A series of comparative experiments show the resulting models outperform uniform memory Markov models in a part-of-speech tagging task.
Jin-Dong Kim, Hae-Chang Rim, Jun-ichi Tsujii
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2003
Where ACL
Authors Jin-Dong Kim, Hae-Chang Rim, Jun-ichi Tsujii
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