2020
DOI: 10.48550/arxiv.2010.03760
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Discriminatively-Tuned Generative Classifiers for Robust Natural Language Inference

Abstract: While discriminative neural network classifiers are generally preferred, recent work has shown advantages of generative classifiers in term of data efficiency and robustness. In this paper, we focus on natural language inference (NLI). We propose GenNLI, a generative classifier for NLI tasks, and empirically characterize its performance by comparing it to five baselines, including discriminative models and large-scale pretrained language representation models like BERT. We explore training objectives for discr… Show more

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