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Recommendation in Collaborative E-Learning by Using Linked Open Data and Ant Colony Optimization

机译:通过使用链接开放数据和蚁群优化的协同电子学习推荐

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Social tagging activities allow the wide set of web users, especially learners, to add free annotations on educational resources to express their interests and automatically generate folksonomies. Folksonomies have been involved in a lot of recommendations approaches. Recently, supported by semantic web technologies, the Linked Open Data (LOD) allow to set up links between entities in the web to join information in a single global data space. This paper demonstrates how structured content accessible via LOD can be leveraged to support educational resources recommender in folksonomies and overcome the limited capabilities to analyze resources information. Another limitation of resources recommendation is the content overspecialization conducting in the incapacity to recommend relevant resources diverse from the ones that learner previously knows. To address these issues, we proposed to take advantage of the richness of the open and linked data graph of DBpedia and Ant Colony Optimization (ACO) to learn users' behavior. The basic idea is to iteratively explore the RDF data graph to produce relevant and diverse recommendations as an alternative of going through the tedious phase of calculating similarity to attain the same goal. Using ant colony optimization, our system performs a search for the appropriate paths in the LOD graph and selects the best neighbors of an active learner to provide improved recommendations. In this paper, we show that ACO also in the problem of recommendation of novel diverse educational resources by exploring LOD is able to deliver good solutions.
机译:社交标记活动允许广泛的网络用户,尤其是学习者,为教育资源添加免费注释,以表达他们的兴趣并自动生成愚蠢的人。愚蠢的人参与了许多建议方法。最近,通过语义Web技术支持,链接的开放数据(LOD)允许在Web中的实体之间设置链接以在单个全局数据空间中加入信息。本文展示了如何利用通过LOD可访问的结构化内容,以支持人物论中的教育资源推荐并克服分析资源信息的有限功能。资源建议的另一个限制是在能力中的内容过度开展,建议从学习者以前了解的那些中多样化的相关资源。为了解决这些问题,我们建议利用DBPedia和蚁群优化(ACO)的开放和联系数据图的丰富度,以学习用户的行为。基本思想是迭代地探索RDF数据图,以产生相关和多样化的建议,作为通过计算相似性的繁琐阶段来实现相同目标的替代。使用蚁群优化,我们的系统对LOD图中的相应路径进行了搜索,并选择活动学习者的最佳邻居,以提供改进的建议。在本文中,我们表明ACO也在探索LOD新颖多样化教育资源的推荐问题中,能够提供良好的解决方案。

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