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Towards Improving Selective Prediction Ability of NLP Systems
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Towards Improving Selective Prediction Ability of NLP Systems
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It's better to say "I can't answer" than to answer incorrectly. This selective prediction ability is crucial for NLP systems to be reliably deployed in real-world applications. Prior work has shown that existing selective prediction techniques fail to perform well, especially in the out-of-domain setting. In this work, we propose a method that improves probability estimates of models by calibrating them using prediction confidence and difficulty score of instances. Using these two signals, we first annotate held-out instances and then train a calibrator to predict the likelihood of correctness of the model's prediction. We instantiate our method with Natural Language Inference (NLI) and Duplicate Detection (DD) tasks and evaluate it in both In-Domain (IID) and Out-of-Domain (OOD) settings. In (IID, OOD) settings, we show that the representations learned by our calibrator result in an improvement of (15.81%, 5.64%) and (6.19%, 13.9%) over 'MaxProb' -- a selective prediction baseline -- on NLI and DD tasks respectively.
Forward citations
Cited by 3 Pith papers
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ECUAS$_n$: A family of metrics for principled evaluation of uncertainty-augmented systems
Introduces the ECUAS_n family of proper scoring rules for evaluating uncertainty-augmented systems, where n tunes the trade-off between prediction accuracy costs and uncertainty quality.
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ECUAS$_n$: A family of metrics for principled evaluation of uncertainty-augmented systems
Proposes ECUAS_n metrics as proper scoring rules for evaluating uncertainty-augmented systems, with n controlling cost trade-offs between predictions and uncertainties.
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ECUAS$_n$: A family of metrics for principled evaluation of uncertainty-augmented systems
ECUAS_n is a parameterized family of proper scoring rules for jointly assessing prediction accuracy and uncertainty quality in automated decision systems.
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