Publication | Open Access
Efficient Inference and Structured Learning for Semantic Role Labeling
83
Citations
31
References
2015
Year
Structured PredictionSemantic Role LabelingEngineeringTextual EntailmentSemantic WebSemanticsCorpus LinguisticsNatural Language ProcessingData ScienceComputational LinguisticsStructural ConstraintsLanguage StudiesMachine TranslationComputer ScienceEfficient InferenceSemantic ParsingTreebanksAutomated ReasoningLinguisticsDynamic Program
We present a dynamic programming algorithm for efficient constrained inference in semantic role labeling. The algorithm tractably captures a majority of the structural constraints examined by prior work in this area, which has resorted to either approximate methods or off-the-shelf integer linear programming solvers. In addition, it allows training a globally-normalized log-linear model with respect to constrained conditional likelihood. We show that the dynamic program is several times faster than an off-the-shelf integer linear programming solver, while reaching the same solution. Furthermore, we show that our structured model results in significant improvements over its local counterpart, achieving state-of-the-art results on both PropBank- and FrameNet-annotated corpora.
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