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TrueLearn: A Family of Bayesian Algorithms to Match Lifelong Learners to Open Educational Resources

机译:Trueuarn:贝叶斯算法的家庭,以匹配终身学习者开设教育资源

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The recent advances in computer-assisted learning systems and the availability of open educational resources today promise a pathway to providing cost-efficient high-quality education to large masses of learners. One of the most ambitious use cases of computer-assisted learning is to build a lifelong learning recommendation system. Unlike short-term courses, lifelong learning presents unique challenges, requiring sophisticated recommendation models that account for a wide range of factors such as background knowledge of learners or novelty of the material while effectively maintaining knowledge states of masses of learners for significantly longer periods of time (ideally, a lifetime). This work presents the foundations towards building a dynamic, scalable and transparent recommendation system for education, modelling learner's knowledge from implicit data in the form of engagement with open educational resources. We i) use a text ontology based on Wikipedia to automatically extract knowledge components of educational resources and, ii) propose a set of online Bayesian strategies inspired by the well-known areas of item response theory and knowledge tracing. Our proposal, TrueLearn, focuses on recommendations for which the learner has enough background knowledge (so they are able to understand and learn from the material), and the material has enough novelty that would help the learner improve their knowledge about the subject and keep them engaged. We further construct a large open educational video lectures dataset and test the performance of the proposed algorithms, which show clear promise towards building an effective educational recommendation system.
机译:当今计算机辅助学习系统的最新进展和今天开放教育资源的可用性承诺为大量学习者提供高度高度高质量的高等教育的途径。计算机辅助学习最雄心勃勃的使用情况之一是建立一个终身学习推荐系统。与短期课程不同,终身学习呈现出独特的挑战,需要复杂的推荐模型,该模型考虑了广泛的因素,例如学习者的背景知识或材料的新颖性,同时有效地维持学习者的知识状态明显更长的时间(理想情况下,一生)。这项工作介绍了建立动态,可扩展和透明的教育推荐系统的基础,以与开放教育资源的参与的形式,将学习者的知识建模,以开放的教育资源为主。我们i)使用基于维基百科的文本本体,自动提取教育资源的知识组成部分,ii)提出一套由众所周知的项目响应理论和知识追踪领域启发的一套在线贝叶斯策略。我们的提案,Truelearn,专注于学习者有足够的背景知识的建议(所以他们能够理解和从材料中学习),并且该材料有足够的新颖性,这将有助于学习者提高他们对主题的知识并保持他们的知识已订婚的。我们进一步构建了一个大型开放式教育视频讲座数据集并测试了所提出的算法的性能,这表明了解建立有效的教育推荐系统。

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