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arxiv 2309.07822 v3 pith:OWQT7A5I submitted 2023-09-14 cs.CL

CATfOOD: Counterfactual Augmented Training for Improving Out-of-Domain Performance and Calibration

classification cs.CL
keywords modelsperformanceaugmentedcalibrationcounterfactualdatainstanceslanguage
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In recent years, large language models (LLMs) have shown remarkable capabilities at scale, particularly at generating text conditioned on a prompt. In our work, we investigate the use of LLMs to augment training data of small language models~(SLMs) with automatically generated counterfactual~(CF) instances -- i.e. minimally altered inputs -- in order to improve out-of-domain~(OOD) performance of SLMs in the extractive question answering~(QA) setup. We show that, across various LLM generators, such data augmentation consistently enhances OOD performance and improves model calibration for both confidence-based and rationale-augmented calibrator models. Furthermore, these performance improvements correlate with higher diversity of CF instances in terms of their surface form and semantic content. Finally, we show that CF augmented models which are easier to calibrate also exhibit much lower entropy when assigning importance, indicating that rationale-augmented calibrators prefer concise explanations.

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