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Do RNNs learn human-like abstract word order preferences? (1811.01866v1)

Published 5 Nov 2018 in cs.CL

Abstract: RNN LLMs have achieved state-of-the-art results on various tasks, but what exactly they are representing about syntax is as yet unclear. Here we investigate whether RNN LLMs learn humanlike word order preferences in syntactic alternations. We collect LLM surprisal scores for controlled sentence stimuli exhibiting major syntactic alternations in English: heavy NP shift, particle shift, the dative alternation, and the genitive alternation. We show that RNN LLMs reproduce human preferences in these alternations based on NP length, animacy, and definiteness. We collect human acceptability ratings for our stimuli, in the first acceptability judgment experiment directly manipulating the predictors of syntactic alternations. We show that the RNNs' performance is similar to the human acceptability ratings and is not matched by an n-gram baseline model. Our results show that RNNs learn the abstract features of weight, animacy, and definiteness which underlie soft constraints on syntactic alternations.

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Authors (2)
  1. Richard Futrell (29 papers)
  2. Roger P. Levy (12 papers)
Citations (24)

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