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New Measures for Offline Evaluation of Learning Path Recommenders

机译:离线评估学习路径推荐的新措施

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Recommending students useful and effective learning paths is highly valuable to improve their learning experience. The evaluation of the effectiveness of this recommendation is a challenging task that can be performed online or offline. Online evaluation is highly popular but it relies on actual path recommendations to students, which may have dramatic implications. Offline evaluation relies on static datasets of students' learning activities and simulates paths recommendations. Although easier to run, it is difficult to accurately evaluate offline the effectiveness of a learning path recommendation. To tackle this issue, this work proposes simple offline evaluation measures. We show that they actually allow to characterise and differentiate the algorithms.
机译:向学生推荐有用和有效的学习途径,对于改善他们的学习经验非常有价值。评估此建议的有效性是一项具有挑战性的任务,可以在线或离线执行。在线评估非常受欢迎,但它依赖于向学生推荐的实际路径,这可能会产生重大影响。离线评估依靠学生学习活动的静态数据集并模拟路径建议。尽管更容易运行,但是很难准确地离线评估学习路径建议的有效性。为了解决这个问题,这项工作提出了简单的离线评估措施。我们表明,它们实际上允许表征和区分算法。

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