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Comparing Test Sets with Item Response Theory

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arxiv 2106.00840 v1 pith:SFIMRYWT submitted 2021-06-01 cs.CL

Comparing Test Sets with Item Response Theory

classification cs.CL
keywords datasetsmodelsstrongabledetecteffectiveevaluateitem
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent years have seen numerous NLP datasets introduced to evaluate the performance of fine-tuned models on natural language understanding tasks. Recent results from large pretrained models, though, show that many of these datasets are largely saturated and unlikely to be able to detect further progress. What kind of datasets are still effective at discriminating among strong models, and what kind of datasets should we expect to be able to detect future improvements? To measure this uniformly across datasets, we draw on Item Response Theory and evaluate 29 datasets using predictions from 18 pretrained Transformer models on individual test examples. We find that Quoref, HellaSwag, and MC-TACO are best suited for distinguishing among state-of-the-art models, while SNLI, MNLI, and CommitmentBank seem to be saturated for current strong models. We also observe span selection task format, which is used for QA datasets like QAMR or SQuAD2.0, is effective in differentiating between strong and weak models.

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