Evaluating LSTM models for grammatical function labelling

WS 2017  ·  Bich-Ngoc Do, Ines Rehbein ·

To improve grammatical function labelling for German, we augment the labelling component of a neural dependency parser with a decision history. We present different ways to encode the history, using different LSTM architectures, and show that our models yield significant improvements, resulting in a LAS for German that is close to the best result from the SPMRL 2014 shared task (without the reranker).

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