ExpBERT: Representation Engineering with Natural Language Explanations
Shikhar Murty, Pang Wei Koh, Percy Liang
Abstract
Suppose we want to specify the inductive bias that married couples typically go on honeymoons for the task of extracting pairs of spouses from text. In this paper, we allow model developers to specify these types of inductive biases as natural language explanations. We use BERT fine-tuned on MultiNLI to "interpret" these explanations with respect to the input sentence, producing explanationguided representations of the input. Across three relation extraction tasks, our method, ExpBERT, matches a BERT baseline but with 3-20 less labeled data and improves on the baseline by 3-10 F1 points with the same amount of labeled data.
Topics & Concepts
Baseline (sea)Computer scienceTask (project management)SentenceNatural language processingNatural languageInductive biasArtificial intelligenceRepresentation (politics)Relation (database)Natural (archaeology)Relationship extractionNatural language generationMulti-task learningInformation extractionData miningManagementPolitical scienceOceanographyEconomicsGeologyArchaeologyLawPoliticsHistoryTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications