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Learning Methods for Rating the Difficulty of Reading Comprehension Questions

机译:评定阅读理解问题难度的学习方法

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This work deals with an Intelligent Tutoring System (ITS) for reading comprehension. Such a system could promote reading comprehension skills. An important step towards building a full ITS for reading comprehension is to build an automated ranking system that will assign a hardness level to questions used by the ITS. This is the main concern of this work. For this purpose we, first, had to define the set of criteria that determines the rate of difficulty of a question. Second, we prepared a bank of questions that were rated by a panel of experts using the set of criteria defined above. Third, we developed an automated rating software based on the criteria defined above. In particular, we considered and compared different machine learning techniques for the ranking system of the third part of the process: Artificial Neural Network (ANN), Support Vector Machine (SVM), decision tree and naïve Bayesian network. The definition of the criteria set for rating a question's difficulty, and the development of an automated software for rating a questions' difficulty, contribute to a tremendous advancement in the ITS domain for reading comprehension by providing a uniform, objective and automated system for determining a question's difficulty.
机译:这项工作涉及智能辅导系统(其),用于阅读理解。这样的系统可以促进阅读理解技能。建立完整的阅读理解的一个重要步骤是建立一个自动排名系统,该系统将为其使用的问题分配硬度水平。这是这项工作的主要关注点。为此目的,我们首先,必须定义确定问题难度率的标准集。其次,我们使用上述规定的标准编制了由专家小组评估的问题。第三,我们根据上面定义的标准开发了一种自动评级软件。特别是,我们考虑并比较了该过程第三部分的排名系统的不同机器学习技术:人工神经网络(ANN),支持向量机(SVM),决策树和天真贝叶斯网络。用于评估问题的难度的标准的定义以及用于评估问题难度的自动化软件的开发有助于通过提供统一,客观和自动化系统来读取理解的巨大进步。问题的困难。

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