A survey on out-of-distribution evaluation of neural NLP models

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Date
2023-06-27Author
Li, Xinzhe
Liu, Ming
Gao, Shang
Buntine, Wray
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Adversarial robustness, domain generalization, and dataset biases are three active lines of research contributing to out-of-distribution (OOD) evaluation on neural NLP models. However, a comprehensive, integrated discussion of the three research lines is still lacking in the literature. In this survey, we:
1. Compare the three lines of research under a unifying definition.
2. Summarize the data-generating processes and evaluation protocols for each line of research.
3. Emphasize the challenges and opportunities for future work.
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- Wray Buntine, PhD. [13]