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Reading Comprehension as Natural Language Inference: A Semantic Analysis

机译:阅读理解为自然语言推断:语义分析

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In the recent past, Natural language Inference (NLI) has gained significant attention, particularly given its promise for downstream NLP tasks. However, its true impact is limited and has not been well studied. Therefore, in this paper, we explore the utility of NLI for one of the most prominent downstream tasks, viz. Question Answering (QA). We transform one of the largest available MRC dataset (RACE) to an NLI form, and compare the performances of a state-of-the-art model (RoBERTa) on both these forms. We propose new characterizations of questions, and evaluate the performance of QA and NLI models on these categories. We highlight clear categories for which the model is able to perform better when the data is presented in a coherent entailment form, and a structured question-answer concatenation form, respectively.
机译:在最近的过去,自然语言推论(NLI)已经显着关注,特别是其承诺下游NLP任务。 然而,其真正的影响是有限的,并且没有得到很好的研究。 因此,在本文中,我们探讨了NLI最突出的下游任务之一的效用。 问题回答(QA)。 我们将最大可用MRC数据集(RACE)转换为NLI形式,并比较这两种形式的最先进模型(ROBERTA)的表现。 我们提出了对问题的新特征,并评估了QA和NLI模型对这些类别的性能。 当数据以连贯的征报表格呈现时,我们突出显示了模型能够更好地执行的清晰类别,以及结构化的问题答案替代形式。

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