HypoNLI: Exploring the Artificial Patterns of Hypothesis-only Bias in Natural Language Inference

Many recent studies have shown that for models trained on datasets for natural language inference (NLI), it is possible to make correct predictions by merely looking at the hypothesis while completely ignoring the premise. In this work, we manage to derive adversarial examples in terms of the hypothesis-only bias and explore eligible ways to mitigate such bias... (read more)

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