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A hybrid recommender system for e-learning based on context awareness and sequential pattern mining

机译:一种基于上下文意识和顺序模式挖掘的电子学习混合推荐系统

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摘要

The rapid evolution of the Internet has resulted in the availability of huge volumes of online learning resources on the web. However, many learners encounter difficulties in retrieval of suitable online learning resources due to information overload. Besides, different learners have different learning needs arising from their differences in learner's context and sequential access pattern behavior. Traditional recommender systems such as content based and collaborative filtering (CF) use content features and ratings, respectively, to generate recommendations for learners. However, for accurate and personalized recommendation of learning resources, learner's context and sequential access patterns should be incorporated into the recommender system. Traditional recommendation techniques do not incorporate the learner's context and sequential access patterns in computing learner similarities and providing recommendations; hence, they are likely to generate inaccurate recommendations. Furthermore, traditional recommender systems provide unreliable recommendations in cases of high rating sparsity. In this paper, we propose a hybrid recommendation approach combining context awareness, sequential pattern mining (SPM) and CF algorithms for recommending learning resources to the learners. In our recommendation approach, context awareness is used to incorporate contextual information about the learner such as knowledge level and learning goals; SPM algorithm is used to mine the web logs and discover the learner's sequential access patterns; and CF computes predictions and generates recommendations for the target learner based on contextualized data and learner's sequential access patterns. Evaluation of our proposed hybrid recommendation approach indicated that it can outperform other recommendation methods in terms of quality and accuracy of recommendations.
机译:互联网的快速演变导致网络上的大量在线学习资源。然而,由于信息过载,许多学习者在检索适当的在线学习资源中遇到困难。此外,不同的学习者从学习者的上下文和顺序访问模式行为中出现了不同的学习需求。传统的推荐系统,如内容基于和协作过滤(CF)分别使用内容特征和评级,为学习者生成建议。但是,对于学习资源的准确和个性化建议,应将学习者的上下文和顺序访问模式合并到推荐系统中。传统推荐技术不纳入学习者的上下文和顺序访问模式,并在计算学习者的相似之处和提供建议;因此,它们可能会产生不准确的建议。此外,传统的推荐系统在高评级稀疏性的情况下提供不可靠的建议。在本文中,我们提出了一种混合推荐方法,将上下文意识,顺序模式挖掘(SPM)和CF算法组合用于向学习者推荐学习资源。在我们的推荐方法中,语境意识用于纳入有关学习者的上下文信息,如知识水平和学习目标; SPM算法用于挖掘Web日志并发现学习者的顺序访问模式;基于上下文数据和学习者的连续访问模式,CF计算预测并为目标学习者生成建议。我们提出的混合推荐方法的评估表明,它可以在建议的质量和准确性方面优于其他推荐方法。

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