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A Multi-level Supervised Contrastive Learning Framework for Low-Resource Natural Language Inference

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arxiv 2205.15550 v1 pith:MDG2HJZW submitted 2022-05-31 cs.CL

A Multi-level Supervised Contrastive Learning Framework for Low-Resource Natural Language Inference

classification cs.CL
keywords languagenaturaldifferentinferencelow-resourcemultisclclassescontrastive
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Natural Language Inference (NLI) is a growingly essential task in natural language understanding, which requires inferring the relationship between the sentence pairs (premise and hypothesis). Recently, low-resource natural language inference has gained increasing attention, due to significant savings in manual annotation costs and a better fit with real-world scenarios. Existing works fail to characterize discriminative representations between different classes with limited training data, which may cause faults in label prediction. Here we propose a multi-level supervised contrastive learning framework named MultiSCL for low-resource natural language inference. MultiSCL leverages a sentence-level and pair-level contrastive learning objective to discriminate between different classes of sentence pairs by bringing those in one class together and pushing away those in different classes. MultiSCL adopts a data augmentation module that generates different views for input samples to better learn the latent representation. The pair-level representation is obtained from a cross attention module. We conduct extensive experiments on two public NLI datasets in low-resource settings, and the accuracy of MultiSCL exceeds other models by 3.1% on average. Moreover, our method outperforms the previous state-of-the-art method on cross-domain tasks of text classification.

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