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Implicit Argument Prediction with Event Knowledge

2018-02-20NAACL 2018Code Available0· sign in to hype

Pengxiang Cheng, Katrin Erk

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Abstract

Implicit arguments are not syntactically connected to their predicates, and are therefore hard to extract. Previous work has used models with large numbers of features, evaluated on very small datasets. We propose to train models for implicit argument prediction on a simple cloze task, for which data can be generated automatically at scale. This allows us to use a neural model, which draws on narrative coherence and entity salience for predictions. We show that our model has superior performance on both synthetic and natural data.

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