Pedagogically Aligned Objectives Create Reliable Automatic Cloze Tests.

Brian Ondov, Dina Demner-Fushman, Kush Attal
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Abstract

The cloze training objective of Masked Language Models makes them a natural choice for generating plausible distractors for human cloze questions. However, distractors must also be both distinct and incorrect, neither of which is directly addressed by existing neural methods. Evaluation of recent models has also relied largely on automated metrics, which cannot demonstrate the reliability or validity of human comprehension tests. In this work, we first formulate the pedagogically motivated objectives of plausibility, incorrectness, and distinctiveness in terms of conditional distributions from language models. Second, we present an unsupervised, interpretable method that uses these objectives to jointly optimize sets of distractors. Third, we test the reliability and validity of the resulting cloze tests compared to other methods with human participants. We find our method has stronger correlation with teacher-created comprehension tests than the state-of-the-art neural method and is more internally consistent. Our implementation is freely available and can quickly create a multiple choice cloze test from any given passage.

教学上一致的目标创建可靠的自动完形测试。
掩蔽语言模型的完形填空训练目标使其成为为人类完形填空问题生成似是而非的干扰因素的自然选择。然而,干扰物也必须是明显的和不正确的,这两者都不是现有的神经方法直接解决的。对最新模型的评估也主要依赖于自动化的度量标准,这无法证明人类理解测试的可靠性或有效性。在这项工作中,我们首先根据语言模型的条件分布,制定了可行性、不正确性和独特性的教学动机目标。其次,我们提出了一种无监督的、可解释的方法,该方法使用这些目标来联合优化干扰物集。第三,与其他人类参与者的方法相比,我们测试了最终完形测试的可靠性和有效性。我们发现,与最先进的神经方法相比,我们的方法与教师创建的理解测试有更强的相关性,并且更具有内部一致性。我们的实现是免费的,可以从任何给定的文章中快速创建一个选择填空测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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