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An Effective Recommendation Framework for Personal Learning Environments Using a Learner Preference Tree and a GA

机译:使用学习者偏好树和GA的个人学习环境的有效推荐框架

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Personalized recommendations are used to support the activities of learners in personal learning environments and this technology can deliver suitable learning resources to learners. This paper models the dynamic multipreferences of learners using the multidimensional attributes of resource and learner ratings by using data mining technology to alleviate sparsity and cold-start problems and increase the diversity of the recommendation list. The presented approach has two main modules: an explicit attribute-based recommender and an implicit attribute-based recommender. In the first module, a learner preference tree (LPT) is introduced to model the interests of learners based on the explicit multidimensional attributes of resources and historical ratings of accessed resources. Then, recommendations are generated by nearest neighborhood collaborative filtering (NNCF). In the second module, the weights of implicit or latent attributes of resources for learners are considered as chromosomes in a genetic algorithm (GA), and then this algorithm optimizes the weights according to historical ratings. Then, recommendations are generated by NNCF using the optimized weight vectors of implicit attributes. The experimental results show that the proposed method outperforms current algorithms on accuracy measures and can alleviate cold-start and sparsity problems and also generate a more diverse recommendation list.
机译:个性化推荐用于支持学习者在个人学习环境中的活动,并且该技术可以为学习者提供合适的学习资源。本文利用资源的多维属性和学习者评分,通过使用数据挖掘技术缓解学习者的稀疏性和冷启动问题并增加推荐列表的多样性,从而对学习者的动态多偏好进行建模。所提出的方法具有两个主要模块:显式的基于属性的推荐器和隐式的基于属性的推荐器。在第一个模块中,引入了学习者偏好树(LPT),以基于资源的显式多维属性和访问资源的历史评分来对学习者的兴趣进行建模。然后,通过最近邻域协作过滤(NNCF)生成推荐。在第二个模块中,学习者的资源的隐式或潜在属性的权重被视为遗传算法(GA)中的染色体,然后该算法根据历史评分对权重进行优化。然后,NNCF使用隐式属性的优化权重向量生成推荐。实验结果表明,所提方法在准确度方面优于现有算法,可以缓解冷启动和稀疏性问题,并生成更多样化的推荐列表。

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