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Educational Recommender System based on Learner’s Annotative Activity

机译:基于学习者注释活动的教育推荐系统

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In recent years, Educational Recommender Systems (ERSs) have attracted great attention as a solution towards addressing the problem of information overload in e-learning environments and providing relevant recommendations to online learners. These systems play a key role in helping learners to find educational resources relevant and pertinent to their profiles and context. So, it is necessary to identify information that helps learner’s profile definition and in identifying requests and interests. In this context, we suggest to take advantage of the annotation activity used usually in the learning context for different purposes and which may reflect certain learner’s characteristics useful as input data for the recommendation process. Therefore, we propose an educational recommender system of web services based on learner’s annotative activity to assist him in his learning activity. This process of recommendation is founded on two preparatory phases: the phase of modelling learner’s personality profile through analysis of annotation digital traces in learning environment realized through a profile constructor module and the phase of discovery of web services which can meet the goals of annotations made by learner via the web service discovery module. The evaluation of the developed annotation based recommendation system through empirical studies realized on groups of learners based on the Student’s t-test showed significant results.
机译:近年来,教育推荐制度(ERSS)吸引了极大的关注,作为解决电子学习环境中信息过载问题并向在线学习者提供相关建议的解决方案。这些系统在帮助学习者找到与其档案和背景相关的教育资源和相关的教育资源方面发挥着关键作用。因此,有必要识别有助于学习者的个人资料定义以及识别请求和兴趣的信息。在这种情况下,我们建议利用通常在学习环境中使用的注释活动,以实现不同的目的,其可能反映某些学习者的特征可用作推荐过程的输入数据。因此,我们提出了一个基于学习者的注册活动的Web服务教育推荐系统,以帮助他参加学习活动。这一建议的过程建立在两个准备阶段:通过分析通过配置文件构造模块和Web服务的发现的发现的学习环境中的注释数字迹象来分析了学习者的人格简介的阶段的阶段。学习者通过Web服务发现模块。通过基于学生T检验的学习群体实现的经验研究对基于批评的推荐制度的评估显示出显着的结果。

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