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.
翻译:近些年来,为评价精细调整的自然语言理解任务模型的性能,引入了许多国家语言规划数据集来评估精细调整模型的自然语言理解任务。虽然,大型预先培训模型的近期结果显示,许多这类数据集基本上饱和,不大可能发现进一步的进展。哪些数据集仍然能够有效地区分强型模型,以及我们预计能够探测未来改进的数据集种类?为了衡量各数据集的这种统一性,我们引用了项目反应理论,并利用18个预先培训的变异模型的预测,对29个数据集进行了评估。我们认为,Quoref、HellaSwag和MC-TACO最适于区分最先进的模型,而SNLI、MLI和DelovelopBank似乎能够饱和到当前强型模型。我们还观察了用于QA数据集(如QAMR或SQUAD2.0)的选定任务格式,在区分强型模型和弱型模型方面是有效的。