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An Educational System for Personalized Teacher Recommendation in K-12 Online Classrooms

机译:在K-12在线教室中的个性化教师推荐教育系统

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In this paper, we propose a simple yet effective solution to build practical teacher recommender systems for online one-on-one classes. Our system consists of (1) a pseudo matching score module that provides reliable training labels; (2) a ranking model that scores every candidate teacher; (3) a novelty boosting module that gives additional opportunities to new teachers; and (4) a diversity metric that guardrails the recommended results to reduce the chance of collision. Offline experimental results show that our approach outperforms a wide range of baselines. Furthermore, we show that our approach is able to reduce the number of student-teacher matching attempts from 7.22 to 3.09 in a five-month observation on a third-party online education platform.
机译:在本文中,我们提出了一个简单而有效的解决方案,可以为在线一班课程构建实用的教师推荐系统。 我们的系统由(1)提供可靠的训练标签的伪匹配分数模块; (2)评分模型分为每个候选教师; (3)一种新颖的提升模块,为新老师提供了额外的机会; (4)修复推荐结果以减少碰撞机会的多样性度量。 离线实验结果表明,我们的方法优于各种基线。 此外,我们表明我们的方法能够在第三方在线教育平台上的五个月观察中将7.22到3.09的学生教师匹配尝试的数量减少。

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