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Few-shot Text Classification with Distributional Signatures

Yujia Bao, Menghua Wu, Shiyu Chang, Regina Barzilay

2020International Conference on Learning Representations54 citations

Abstract

In this paper, we explore meta-learning for few-shot text classification. Meta-learning has shown strong performance in computer vision, where low-level patterns are transferable across learning tasks. However, directly applying this approach to text is challenging–lexical features highly informative for one task maybe insignificant for another. Thus, rather than learning solely from words, our model also leverages their distributional signatures, which encode pertinent word occurrence patterns. Our model is trained within a meta-learning framework to map these signatures into attention scores, which are then used to weight the lexical representations of words. We demonstrate that our model consistently outperforms prototypical networks learned on lexical knowledge (Snell et al., 2017) in both few-shot text classification and relation classification by a significant margin across six benchmark datasets (19.96% on average in 1-shot classification).

Topics & Concepts

Computer scienceArtificial intelligenceMargin (machine learning)Natural language processingTask (project management)Benchmark (surveying)Word (group theory)ENCODEShot (pellet)Meta learning (computer science)Machine learningMathematicsEconomicsBiochemistryGeodesyManagementChemistryGeneGeographyGeometryOrganic chemistryDomain Adaptation and Few-Shot LearningTopic ModelingMultimodal Machine Learning Applications
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