POS Induction (State of the art): Difference between revisions
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| Line 15: | Line 15: | ||
| MRF initialized with Brown prototypes | | MRF initialized with Brown prototypes | ||
| Christodoulopoulos, Goldwater and Steedman (2010) | | Christodoulopoulos, Goldwater and Steedman (2010) | ||
| | | | ||
| 76.1% | | 76.1% | ||
|- | |- | ||
| Line 21: | Line 21: | ||
| Logistic regression with features and LBFGS | | Logistic regression with features and LBFGS | ||
| Berg-Kirkpatrick et al. (2010) | | Berg-Kirkpatrick et al. (2010) | ||
| | | | ||
| 75.5% | | 75.5% | ||
|- | |- | ||
Revision as of 11:17, 25 June 2012
Evaluation
Many-to-1: Map every induced label to a gold standard tag greedily (45 labels to 45 tags of the Penn tag set). Use the mapping to compute tag accuracy on the Wall Street Journal portion of the Penn TreeBank.
Results
| System name | Short description | Main publications | Software | Many-to-1 |
|---|---|---|---|---|
| Brown+proto | MRF initialized with Brown prototypes | Christodoulopoulos, Goldwater and Steedman (2010) | 76.1% | |
| Logistic regression with features and LBFGS | Berg-Kirkpatrick et al. (2010) | 75.5% | ||
| Clark DMF | Distributional clustering + morphology + frequency | Clark (2003) | alexc | 71.2%* |
* according to Christodoulopoulos, Goldwater and Steedman (2010)