Learning Student and Content Embeddings for Personalized Lesson Sequence Recommendation

S. Reddy, I. Labutov, T. Joachims
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引用次数: 17

Abstract

Students in online courses generate large amounts of data that can be used to personalize the learning process and improve quality of education. In this paper, we present the Latent Skill Embedding (LSE), a probabilistic model of students and educational content that can be used to recommend personalized sequences of lessons with the goal of helping students prepare for specific assessments. Akin to collaborative filtering for recommender systems, the algorithm does not require students or content to be described by features, but it learns a representation using access traces. We formulate this problem as a regularized maximum-likelihood embedding of students, lessons, and assessments from historical student-content interactions. Empirical findings on large-scale data from Knewton, an adaptive learning technology company, show that this approach predicts assessment results competitively with benchmark models and is able to discriminate between lesson sequences that lead to mastery and failure.
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个性化课程序列推荐的学习学生和内容嵌入
在线课程的学生产生大量数据,这些数据可用于个性化学习过程和提高教育质量。在本文中,我们提出了潜在技能嵌入(LSE),这是一种学生和教育内容的概率模型,可用于推荐个性化课程序列,目的是帮助学生为特定评估做准备。类似于推荐系统的协同过滤,该算法不需要用特征来描述学生或内容,而是使用访问跟踪来学习表征。我们将这个问题表述为一个正则化的最大似然嵌入学生、课程和评估的历史学生内容交互。适应性学习技术公司Knewton对大规模数据的实证研究表明,这种方法预测的评估结果与基准模型相比具有竞争力,并且能够区分导致精通和失败的课程序列。
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