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Case-Based Recommendation for Online Judges Using Learning Itineraries

机译:基于案例的在线法官使用学习路线的建议

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Online judges are online repositories with hundreds or thousands of programming exercises or problems. They are very interesting tools for learning programming concepts, but novice users tend to feel overwhelmed by the large number of problems available. Traditional recommendation techniques based on content or collaborative filtering do not work well in these systems due to the lack of user ratings or semantic descriptions of the problems. In this work, we propose a recommendation approach based on learning itineraries, i.e., the sequences of problems that the users tried to solve. Our experiments reveal that interesting learning paths can emerge from previous user experiences and we can use those learning paths to recommend interesting problems to new users. We also show that the recommendation can be improved if we consider not only the problems but also the order in which they were solved.
机译:在线评委是具有成百上千个编程练习或问题的在线存储库。它们是用于学习编程概念的非常有趣的工具,但是新手用户往往会对大量可用问题感到不知所措。由于缺少用户评分或问题的语义描述,基于内容或协作过滤的传统推荐技术在这些系统中无法很好地工作。在这项工作中,我们提出了一种基于学习路线的推荐方法,即用户尝试解决的问题序列。我们的实验表明,有趣的学习路径可以从以前的用户体验中产生,并且我们可以使用这些学习路径向新用户推荐有趣的问题。我们还表明,如果我们不仅考虑问题,而且考虑解决问题的顺序,也可以改进该建议。

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