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Does Pre-training Induce Systematic Inference? How Masked Language Models Acquire Commonsense Knowledge (2112.08583v1)

Published 16 Dec 2021 in cs.CL

Abstract: Transformer models pre-trained with a masked-language-modeling objective (e.g., BERT) encode commonsense knowledge as evidenced by behavioral probes; however, the extent to which this knowledge is acquired by systematic inference over the semantics of the pre-training corpora is an open question. To answer this question, we selectively inject verbalized knowledge into the minibatches of a BERT model during pre-training and evaluate how well the model generalizes to supported inferences. We find generalization does not improve over the course of pre-training, suggesting that commonsense knowledge is acquired from surface-level, co-occurrence patterns rather than induced, systematic reasoning.

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Authors (3)
  1. Ian Porada (7 papers)
  2. Alessandro Sordoni (53 papers)
  3. Jackie Chi Kit Cheung (57 papers)
Citations (8)