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Diversity in Spectral Learning for Natural Language Parsing

2015-05-31EMNLP 2015Unverified0· sign in to hype

Shashi Narayan, Shay B. Cohen

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Abstract

We describe an approach to create a diverse set of predictions with spectral learning of latent-variable PCFGs (L-PCFGs). Our approach works by creating multiple spectral models where noise is added to the underlying features in the training set before the estimation of each model. We describe three ways to decode with multiple models. In addition, we describe a simple variant of the spectral algorithm for L-PCFGs that is fast and leads to compact models. Our experiments for natural language parsing, for English and German, show that we get a significant improvement over baselines comparable to state of the art. For English, we achieve the F_1 score of 90.18, and for German we achieve the F_1 score of 83.38.

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