STAN:用于跨领域问题难度预测的对抗网络

Yeqing Huang, Wei Huang, Shiwei Tong, Zhenya Huang, Qi Liu, Enhong Chen, Jianhui Ma, Liang Wan, Shijin Wang
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引用次数: 2

摘要

在智能教育系统中,问题难度预测(QDP)是个性化问题推荐和试卷分析等许多应用的基础任务。以往的工作主要集中在数据驱动的QDP方法上,这些方法严重依赖于大规模的课程标记数据集。为了减轻劳动强度,一种直观的方法是在QDP中引入领域自适应,将每门课程视为一个领域。在教育心理学中,不同课程的难度有两个共同的影响因素:理解问题和产生反应的障碍,即刺激和任务难度。为此,我们提出了一种新的基于刺激和任务难度的对抗网络(STAN),该网络从刺激和任务的角度对问题难度进行建模。然后,为了调整源域和目标域的难度分布,我们利用了带有可读性增强伪标签的条件对抗学习。同时,提出了一种基于密度估计的隐式对齐采样方法。最后,我们在真实问题数据集上进行了实验,以评估我们的QDP模型和领域自适应方法的有效性。我们的方法在多课程的真实问题数据上显著提高了最先进方法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
STAN: Adversarial Network for Cross-domain Question Difficulty Prediction
In intelligent education systems, question difficulty prediction (QDP) is a fundamental task of many applications, such as personalized question recommendation and test paper analysis. Previous work mainly focus on data-driven QDP methods, which are heavily relied on the large-scale labeled dataset of courses. To alleviate the labor intensity, an intuitive method is to introduce domain adaptation into QDP and consider each course as a domain. In educational psychology, there are two factors influencing difficulty common to different courses: the obstacles of comprehending the question and generating a response, namely stimulus and task difficulty. To this end, we propose a novel Stimulus and Task difficulty-based Adversarial Network (STAN) that models question difficulty from the views of stimulus and task. Then, in order to align the difficulty distribution of the source domain and the target domain, we utilize the conditional adversarial learning with readability-enhanced pseudo-labels. Meanwhile, we proposed a sampling method based on density estimation to implicit alignment. Finally, we conduct experiments on the real questions datasets to evaluate the effectiveness of our QDP model and domain adaptation method. Our method significantly improves accuracy over state-of-the-art methods on real-world question data of multiple courses.
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