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Sherlock: A Semi-automatic Framework for Quiz Generation Using a Hybrid Semantic Similarity Measure

机译:Sherlock:使用混合语义相似性测度生成测验的半自动框架

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摘要

In this paper, we present a semi-automatic system (Sherlock) for quiz generation using linked data and textual descriptions of RDF resources. Sherlock is distinguished from existing quiz generation systems in its generic framework for domain-independent quiz generation as well as in the ability of controlling the difficulty level of the generated quizzes. Difficulty scaling is non-trivial, and it is fundamentally related to cognitive science. We approach the problem with a new angle by perceiving the level of knowledge difficulty as a similarity measure problem and propose a novel hybrid semantic similarity measure using linked data. Extensive experiments show that the proposed semantic similarity measure outperforms four strong baselines with more than 47 % gain in clustering accuracy. In addition, we discovered in the human quiz test that the model accuracy indeed shows a strong correlation with the pairwise quiz similarity.
机译:在本文中,我们介绍了一种半自动系统(Sherlock),用于使用链接的数据和RDF资源的文本描述来生成测验。 Sherlock在用于领域无关的测验生成的通用框架以及控制所生成测验的难度级别的能力方面,与现有测验生成系统不同。难度定标是不平凡的,它从根本上与认知科学有关。通过将知识难度的水平视为相似性度量问题,我们以一个新的角度解决了该问题,并提出了一种使用链接数据的新型混合语义相似性度量。大量实验表明,提出的语义相似性度量优于四个强基线,聚类精度提高了47%以上。此外,我们在人工测验中发现,模型的准确性确实与成对的测验相似性密切相关。

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