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Learning Content Recommendations on Personalized Learning Environment Using Collaborative Filtering Method

机译:使用协作过滤方法在个性化学习环境中的学习内容建议

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Personal Learning Environment (PLE) is an e-learning concept that allows users to manage their learning environment both in terms of content and process. However, significant problems with PLE implementation in distance learning are excessive information and difficulties in finding the suitable learning content for learners. To overcome these problems, an experimental study was conducted to explore a learning content recommendation system for learners. The learning content recommendation system uses the Collaborative Filtering (CF) algorithm for the basis. CF is a method for filtering information by collecting ratings and combining it with similar information needs or interests of other users. This study intends to build the concept of PLE distance learning by applying the CF recommendation system to find learning content that is appropriate to the needs of learners. The test results reveal that the proposed PLE application is compliant with the PLE attributes. This study has also succeeded in applying a recommendation system using the CF algorithm with the concept of PLE in distance learning. Moreover, the Mean Absolute Error (MAE) calculation reveals that the best-obtained recommendation results reached by K=10. Based on the experimental data obtained, the greater the value of K used in the CF algorithm, the greater the average error.
机译:个人学习环境(PLE)是一种电子学习概念,允许用户在内容和过程方面管理他们的学习环境。然而,远程学习中PLE实施的重大问题是过多的信息和难以为学习者找到合适的学习内容。为了克服这些问题,进行了实验研究以探索针对学习者的学习内容推荐系统。学习内容推荐系统以协作过滤(CF)算法为基础。 CF是一种通过收集评级并将其与其他用户的相似信息需求或兴趣组合来过滤信息的方法。本研究旨在通过应用CF推荐系统来找到适合学习者需求的学习内容,从而构建PLE远程学习的概念。测试结果表明,所提出的PLE应用程序符合PLE属性。这项研究还成功地将带有PLE概念的CF算法推荐系统应用到了远程学习中。此外,平均绝对误差(MAE)计算表明,最佳获得的推荐结果达到K = 10。根据获得的实验数据,CF算法中使用的K值越大,平均误差越大。

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