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Revisiting Few-shot Relation Classification: Evaluation Data and Classification Schemes

Ofer Sabo, Yanai Elazar, Yoav Goldberg, Ido Dagan

2021Transactions of the Association for Computational Linguistics32 citationsDOIOpen Access PDF

Abstract

We explore few-shot learning (FSL) for relation classification (RC). Focusing on the realistic scenario of FSL, in which a test instance might not belong to any of the target categories (none-of-the-above, [NOTA]), we first revisit the recent popular dataset structure for FSL, pointing out its unrealistic data distribution. To remedy this, we propose a novel methodology for deriving more realistic few-shot test data from available datasets for supervised RC, and apply it to the TACRED dataset. This yields a new challenging benchmark for FSL-RC, on which state of the art models show poor performance. Next, we analyze classification schemes within the popular embedding-based nearest-neighbor approach for FSL, with respect to constraints they impose on the embedding space. Triggered by this analysis, we propose a novel classification scheme in which the NOTA category is represented as learned vectors, shown empirically to be an appealing option for FSL.

Topics & Concepts

Computer scienceBenchmark (surveying)EmbeddingRelation (database)Artificial intelligenceMachine learningk-nearest neighbors algorithmScheme (mathematics)Shot (pellet)Data miningMathematicsOrganic chemistryChemistryMathematical analysisGeodesyGeographyDomain Adaptation and Few-Shot LearningTopic ModelingMultimodal Machine Learning Applications
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