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An Empirical Study on Robustness to Spurious Correlations using Pre-trained Language Models
Author(s) -
Lifu Tu,
Garima Lalwani,
Spandana Gella,
He He
Publication year - 2020
Publication title -
transactions of the association for computational linguistics
Language(s) - English
Resource type - Journals
ISSN - 2307-387X
DOI - 10.1162/tacl_a_00335
Subject(s) - spurious relationship , computer science , inference , robustness (evolution) , generalization , paraphrase , artificial intelligence , machine learning , counterexample , language model , natural language processing , mathematics , mathematical analysis , biochemistry , chemistry , discrete mathematics , gene
Recent work has shown that pre-trained language models such as BERT improve robustness to spurious correlations in the dataset. Intrigued by these results, we find that the key to their success is generalization from a small amount of counterexamples where the spurious correlations do not hold. When such minority examples are scarce, pre-trained models perform as poorly as models trained from scratch. In the case of extreme minority, we propose to use multi-task learning (MTL) to improve generalization. Our experiments on natural language inference and paraphrase identification show that MTL with the right auxiliary tasks significantly improves performance on challenging examples without hurting the in-distribution performance. Further, we show that the gain from MTL mainly comes from improved generalization from the minority examples. Our results highlight the importance of data diversity for overcoming spurious correlations.1

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