Publication | Open Access
NeuroCounterfactuals: Beyond Minimal-Edit Counterfactuals for Richer Data Augmentation
12
Citations
40
References
2022
Year
Unknown Venue
Llm Fine-tuningEngineeringMachine LearningNeural RecodingNeurolinguisticsCorpus LinguisticsText MiningNatural Language ProcessingLanguage Model AdaptationData ScienceComputational LinguisticsCounterfactual Data AugmentationLanguage EngineeringMemorySentiment SteeringLanguage StudiesMachine TranslationData AugmentationNeuroinformaticsNlp TaskNeuroimagingDeep LearningRicher Data AugmentationNeuroscienceLinguisticsLanguage Generation
While counterfactual data augmentation offers a promising step towards robust generalization in natural language processing, producing a set of counterfactuals that offer valuable inductive bias for models remains a challenge. Most existing approaches for producing counterfactuals, manual or automated, rely on small perturbations via minimal edits, resulting in simplistic changes. We introduce NeuroCounterfactuals, designed as loose counterfactuals, allowing for larger edits which result in naturalistic generations containing linguistic diversity, while still bearing similarity to the original document. Our novel generative approach bridges the benefits of constrained decoding, with those of language model adaptation for sentiment steering. Training data augmentation with our generations results in both in-domain and out-of-domain improvements for sentiment classification, outperforming even manually curated counterfactuals, under select settings. We further present detailed analyses to show the advantages of NeuroCounterfactuals over approaches involving simple, minimal edits.
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