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⇱ Paper page - Generalization in NLI: Ways (Not) To Go Beyond Simple Heuristics


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arxiv:2110.01518

Generalization in NLI: Ways (Not) To Go Beyond Simple Heuristics

Published on Oct 4, 2021

Abstract

Several strategies, including adapter and debiasing techniques, were tested for their effectiveness in improving the generalization of BERT-based models across different datasets in natural language inference tasks.

Much of recent progress in NLU was shown to be due to models' learning dataset-specific heuristics. We conduct a case study of generalization in NLI (from MNLI to the adversarially constructed HANS dataset) in a range of BERT-based architectures (adapters, Siamese Transformers, HEX debiasing), as well as with subsampling the data and increasing the model size. We report 2 successful and 3 unsuccessful strategies, all providing insights into how Transformer-based models learn to generalize.

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