T\"upa at SemEval-2019 Task1: (Almost) feature-free Semantic Parsing

SEMEVAL 2019  ·  Tobias P{\"u}tz, Kevin Glocker ·

Our submission for Task 1 {`}Cross-lingual Semantic Parsing with UCCA{'} at SemEval-2018 is a feed-forward neural network that builds upon an existing state-of-the-art transition-based directed acyclic graph parser. We replace most of its features by deep contextualized word embeddings and introduce an approximation to represent non-terminal nodes in the graph as an aggregation of their terminal children. We further demonstrate how augmenting data using the baseline systems provides a consistent advantage in all open submission tracks. We submitted results to all open tracks (English, in- and out-of-domain, German in-domain and French in-domain, low-resource). Our system achieves competitive performance in all settings besides the French, where we did not augment the data. Post-evaluation experiments showed that data augmentation is especially crucial in this setting.

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