基于k均值聚类的社会学习推荐方法

Sonia Souabi, A. Retbi, M. K. Idrissi, S. Bennani
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引用次数: 5

摘要

社交网络是一种强大而有效的电子学习工具,可以促进学习者之间的协作。因此,为了更好地管理这些环境中的学习过程,必须使用推荐系统,它在推荐适合学习者不同需求的有趣材料方面发挥着非常重要的作用。为了对推荐系统进行建模,研究人员依赖于许多工具,例如利用机器学习算法或学习者之间的社交互动。然而,在一个社会网络中的行为实际上可以从一个学习者到另一个学习者,所以我们将处理具有不同态度的几类学习者。基于此,我们提出了一个相当重要的问题,即在计算推荐值之前,根据明确的标准和态度对学习者进行分类。因此,在我们提倡的推荐系统中,我们使用k-means算法对学习者进行分类,然后参考我们之前的工作中提出的旧推荐系统来计算每个聚类的推荐。因此,全球系统基于三个要点:k-means、相关性和共现性。然后我们评估我们提出的系统的性能,以便与不考虑k-means算法的系统相比显示其性能。
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A Recommendation Approach in Social Learning Based on K-Means Clustering
Social networks are a powerful and efficient tool for e-learning promoting collaboration between learners. Thus, to better manage the learning process within these environments, it is imperative to use recommendation systems which take a very significant role in suggesting interesting material adapted to the different needs of learners. To model the recommendation systems, the researchers relied on numerous tools such as the exploitation of Machine Learning algorithms or social interactions between learners. Yet, behaviour within a social network can actually differ from one learner to another, so we will be dealing with several categories of learners with distinct attitudes. Based on this, we raise a rather important issue which is to classify the learners according to well-defined criteria and attitudes before calculating the recommendations. In the recommendation system we advocate, we therefore use the k-means algorithm to classify learners, then we calculate the recommendations for each cluster by referring to our old recommendation system proposed in one of our previous works. The global system is thus based on three essential points: k-means, correlation and co-occurrence. We then evaluate the performance of our proposed system in order to show its performance compared to the system that does not consider the k-means algorithm.
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