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PRIME: Block-Wise Missingness Handling for Multi-modalities in Intelligent Tutoring Systems

机译:Prime:智能辅导系统中的多种方式的阻止失踪处理

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Block-wise missingness in multimodal data poses a challenging barrier for the analysis over it, which is quite common in practical scenarios such as the multimedia intelligent tutoring systems (ITSs). In this work, we collected data from 194 undergraduates via a biology ITS which involves three modalities: student-system logfiles, facial expressions, and eye tracking. However, only 32 out of the 194 students had all three modalities and 83% of them were missing the facial expression data, eye tracking data, or both. To handle such a block-wise missing problem, we propose a Progressively Refined Imputation for Multi-modalities by auto-Encoder (PRIME), which trains the model based on single, pair-wise, and entire modalities for imputation in a progressive manner, and therefore enables us to maximally utilize all the available data. We have evaluated PRIME against single-modality log-only (without missingness handling) and five state-of-the-art missing data handling methods on one important yet challenging student modeling task: to predict students' learning gains. Our results show that using multimodal data as a result of missing data handling yields better prediction performance than using logfiles only, and PRIME outperforms other baseline methods for both learning gain prediction and data reconstruction tasks.
机译:多模式数据中的阻止失踪对其进行了挑战性的障碍,这在诸如多媒体智能辅导系统(ITS)之类的实际情况中是非常常见的。在这项工作中,我们通过生物学收集了194人本科生的数据,它涉及三种方式:学生系统的Logfiles,面部表情和眼跟踪。但是,194名学生中只有32名所有三种方式,其中83%都缺少面部表情数据,眼睛跟踪数据或两者。为了处理这种块缺失的问题,我们通过自动编码器(Prime)提出了对多模型的逐步精细的估算,其基于单个,配对和整个模型以逐步方式造成普通的载体,因此,我们使我们能够最大限度地利用所有可用数据。我们已经评估了对单片式数量的单片数量的素数(没有遗失处理)和五个重要的缺失数据处理方法,一个重要但具有挑战性的学生建模任务:预测学生的学习收益。我们的结果表明,由于缺少数据处理的结果,使用多模式数据产生的预测性能不仅仅是使用Logfiles,而Prime优于学习增益预测和数据重建任务的其他基线方法。

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