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Difficulty-level modeling of ontology-based factual questions

机译:基于本体的事实问题的难度级模型

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摘要

Semantics-based knowledge representations such as ontologies are found to be very useful in automatically generating meaningful factual questions. Determining the difficulty-level of these system-generated questions is helpful to effectively utilize them in various educational and professional applications. The existing approach for predicting the difficulty-level of factual questions utilizes only few naive features and, its accuracy (F-measure) is found to be close to only 50% while considering our benchmark set of 185 questions. In this paper, we propose a new methodology for this problem by identifying new features and by incorporating an educational theory, related to difficulty-level of a question, called Item Response Theory (IRT). In the IRT, knowledge proficiency of end users (learners) are considered for assigning difficulty-levels, because of the assumptions that a given question is perceived differently by learners of various proficiency levels. We have done a detailed study on the features/factors of a question statement which could possibly determine its difficulty-level for three learner categories (experts, intermediates, and beginners). We formulate ontology-based metrics for the same. We then train three logistic regression models to predict the difficulty-level corresponding to the three learner categories. The output of these models is interpreted using the IRT to find a question’s overall difficulty-level. The accuracy of the three models based on cross-validation is found to be in satisfactory range (67–84%). The proposed model (containing three classifiers) outperforms the existing model by more than 20% in precision, recall and F1-score measures.
机译:基于语义的知识表示(如本体)在自动生成有意义的事实问题方面非常有用。确定这些系统生成问题的难度有助于在各种教育和专业应用中有效地利用它们。现有的预测实际问题难度水平的方法只利用了很少的简单特征,考虑到我们的185个问题的基准集,其准确度(F-measure)接近50%。在本文中,我们提出了一种新的方法来解决这个问题,通过识别新的特征,并结合一种与问题难度相关的教育理论,称为项目反应理论(IRT)。在IRT中,考虑最终用户(学习者)的知识熟练程度来分配难度级别,因为假设不同熟练程度的学习者对给定问题的感知不同。我们对问题陈述的特征/因素进行了详细研究,这些特征/因素可能决定三个学习者类别(专家、中级和初学者)的难度水平。我们制定了基于本体的度量标准。然后,我们训练三个逻辑回归模型来预测三个学习者类别对应的难度水平。使用IRT对这些模型的输出进行解释,以找到问题的总体难度水平。基于交叉验证的三个模型的准确度在令人满意的范围内(67–84%)。提出的模型(包含三个分类器)在精确度、召回率和F1分数方面比现有模型高出20%以上。

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