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Competitive generative models with structure learning for NLP classification tasks

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Figure

Figure 1: Naive Bayes Bayesian Network
Table 1: Data sizes for the PP attachment and SRLtasks.
Table 3: Naive Bayes and Logistic regression PPattachment results.
Table 6: Bayesian Network and Conditional log-linear model SRL classification results.
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