论文标题
预测参与视频讲座
Predicting Engagement in Video Lectures
论文作者
论文摘要
近年来,开放教育资源(OER)的爆炸爆炸产生了对可扩展的,自动方法处理和评估OER的需求,最终目标是确定和推荐最合适的学习材料。我们专注于建立模型,以找到上下文不足的参与(即基于人群)涉及的特征和特征,这是一个很少研究的主题与其他上下文化和个性化的方法相比,更加专注于个人学习者参与。学习者的参与度可以说是比流行度/视图数量更可靠的措施,比用户评分更丰富,并且也被证明是实现学习成果的关键组成部分。在这项工作中,我们探讨了建立一个基于人群参与教育的预测模型的想法。我们介绍了一个小说的大型视频讲座数据集,以预测上下文不足的参与度,并提出了跨模式和模态特定功能集以实现此任务。我们进一步测试了量化学习者参与信号的不同策略。在数据稀缺的情况下,我们证明了我们的方法的使用。此外,我们对最佳性能模型进行敏感性分析,该模型显示出有希望的性能,并且可以轻松地集成到OER的教育推荐系统中。
The explosion of Open Educational Resources (OERs) in the recent years creates the demand for scalable, automatic approaches to process and evaluate OERs, with the end goal of identifying and recommending the most suitable educational materials for learners. We focus on building models to find the characteristics and features involved in context-agnostic engagement (i.e. population-based), a seldom researched topic compared to other contextualised and personalised approaches that focus more on individual learner engagement. Learner engagement, is arguably a more reliable measure than popularity/number of views, is more abundant than user ratings and has also been shown to be a crucial component in achieving learning outcomes. In this work, we explore the idea of building a predictive model for population-based engagement in education. We introduce a novel, large dataset of video lectures for predicting context-agnostic engagement and propose both cross-modal and modality-specific feature sets to achieve this task. We further test different strategies for quantifying learner engagement signals. We demonstrate the use of our approach in the case of data scarcity. Additionally, we perform a sensitivity analysis of the best performing model, which shows promising performance and can be easily integrated into an educational recommender system for OERs.