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arxiv: 2010.07676 · v1 · pith:RUSBOHWI · submitted 2020-10-15 · cs.CL · cs.AI

Reliable Evaluations for Natural Language Inference based on a Unified Cross-dataset Benchmark

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classification cs.CL cs.AI
keywords evaluationannotationartifactsbenchmarkcross-datasetsdatasetsinferencelanguage
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Recent studies show that crowd-sourced Natural Language Inference (NLI) datasets may suffer from significant biases like annotation artifacts. Models utilizing these superficial clues gain mirage advantages on the in-domain testing set, which makes the evaluation results over-estimated. The lack of trustworthy evaluation settings and benchmarks stalls the progress of NLI research. In this paper, we propose to assess a model's trustworthy generalization performance with cross-datasets evaluation. We present a new unified cross-datasets benchmark with 14 NLI datasets, and re-evaluate 9 widely-used neural network-based NLI models as well as 5 recently proposed debiasing methods for annotation artifacts. Our proposed evaluation scheme and experimental baselines could provide a basis to inspire future reliable NLI research.

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