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Combining Sample Selection and Error Driven Pruning for Machine Learning of Coreference Rules

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Figure

Table 1: Feature Set for the Coreference System. The feature set contains relational and non-relational features
Table 2: Effects of sample selection and error-driven pruning.
Figure 3: The RULE-SELECT algorithm

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