Teaching Syntax by Adversarial Distraction
Juho Kim, Christopher Malon, and Asim Kadav. 2018. "Teaching Syntax by Adversarial Distraction." Proceedings of the EMNLP First Workshop on Fact Extraction and Verification Existing entailment datasets mainly pose problems which can be answered without attention to grammar or word order. L...
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Zusammenfassung: | Juho Kim, Christopher Malon, and Asim Kadav. 2018. "Teaching
Syntax by Adversarial Distraction." Proceedings of the EMNLP First Workshop
on Fact Extraction and Verification Existing entailment datasets mainly pose problems which can be answered
without attention to grammar or word order. Learning syntax requires comparing
examples where different grammar and word order change the desired
classification. We introduce several datasets based on synthetic
transformations of natural entailment examples in SNLI or FEVER, to teach
aspects of grammar and word order. We show that without retraining, popular
entailment models are unaware that these syntactic differences change meaning.
With retraining, some but not all popular entailment models can learn to
compare the syntax properly. |
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DOI: | 10.48550/arxiv.1810.11067 |