论文标题
处方深刻的细心分数预测可以提高学生参与度
Prescribing Deep Attentive Score Prediction Attracts Improved Student Engagement
论文作者
论文摘要
已经开发出智能辅导系统(ITS)来通过适应为每个人优化的学习路径来为学生提供个性化的学习经验。在其广泛的范围内,得分预测是一个研究领域,使学生能够根据目前的位置构建单独现实的目标。通过ITS提供的预期分数,学生可以立即将自己的预期分数与一个人的实际分数进行比较,这直接与其可以灌输的可靠性相对应。换句话说,完善预测分数的精度与学生可能对ITS拥有的信心水平严格相关,这显然会改善学生的参与度。但是,以前的研究仅集中在提高预测模型的性能上,在很大程度上缺乏其实际应用产生的好处。在本文中,我们证明了在现实世界中部署的分数预测模型的准确性通过提供经验证据来显着影响用户参与度。为此,我们将最先进的细心神经网络分数预测模型应用于圣诞老人,这是一个多平台英语英语,其大约78万用户在韩国,专门侧重于toeic(国际通信测试)标准化考试。我们使用两个模型对其进行了受控的A/B测试,分别基于协作过滤和深入的细心神经网络,以验证更准确的模型是否会导致任何学生参与度。结果得出的结论是,细心的模型不仅引起了较高的学生士气(例如,更高的诊断测试完成率,回答的问题数等),还鼓励了圣诞老人的积极参与(例如,更高的购买率,提高的总利润等)。
Intelligent Tutoring Systems (ITSs) have been developed to provide students with personalized learning experiences by adaptively generating learning paths optimized for each individual. Within the vast scope of ITS, score prediction stands out as an area of study that enables students to construct individually realistic goals based on their current position. Via the expected score provided by the ITS, a student can instantaneously compare one's expected score to one's actual score, which directly corresponds to the reliability that the ITS can instill. In other words, refining the precision of predicted scores strictly correlates to the level of confidence that a student may have with an ITS, which will evidently ensue improved student engagement. However, previous studies have solely concentrated on improving the performance of a prediction model, largely lacking focus on the benefits generated by its practical application. In this paper, we demonstrate that the accuracy of the score prediction model deployed in a real-world setting significantly impacts user engagement by providing empirical evidence. To that end, we apply a state-of-the-art deep attentive neural network-based score prediction model to Santa, a multi-platform English ITS with approximately 780K users in South Korea that exclusively focuses on the TOEIC (Test of English for International Communications) standardized examinations. We run a controlled A/B test on the ITS with two models, respectively based on collaborative filtering and deep attentive neural networks, to verify whether the more accurate model engenders any student engagement. The results conclude that the attentive model not only induces high student morale (e.g. higher diagnostic test completion ratio, number of questions answered, etc.) but also encourages active engagement (e.g. higher purchase rate, improved total profit, etc.) on Santa.