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Disfluency Detection using a Noisy Channel Model and a Deep Neural Language Model

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Figure

Table 2: F-scores on the dev set for a variety ofLSTM language models.
Table 6: Comparison of the LSTM-NCM to state-of-the-art methods on the dev set. *Models haveused richer input.

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