Abstract
We present an incremental dependency parsing model that jointly performs disfluency detection. The model handles speech repairs using a novel non-monotonic transition system, and includes several novel classes of features. For comparison, we evaluated two pipeline systems, using state-of-the-art disfluency detectors. The joint model performed better on both tasks, with a parse accuracy of 90.5% and 84.0% accuracy at disfluency detection. The model runs in expected linear time, and processes over 550 tokens a second.
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CITATION STYLE
Honnibal, M., & Johnson, M. (2014). Joint Incremental Disfluency Detection and Dependency Parsing. Transactions of the Association for Computational Linguistics, 2, 131–142. https://doi.org/10.1162/tacl_a_00171
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