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Course Recommendation Based on Query Classification Approach

机译:基于查询分类方法的课程推荐

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This article describes how with a non-formal education, a scholar has to choose courses among various domains to meet the research aims. In spite of this, the availability of large number of courses, makes the process of selecting the appropriate course a tedious, time-consuming, and risky decision, and the course selection will directly affect the performance of a scholar. The best approach to solve such problems and to produce desirable results is to use a “recommendation system.” Recommender systems at the core employ information retrieval techniques and the ongoing effort of such information retrieval systems is to deliver the most relevant information to the learner. Therefore, if a recommender system is able to recognize the intent and requirements that a user express in the form of queries, it can generate more valid recommendations. This article presents an N-Gram classification technique which can be used to generate course recommendations to scholars depend on the requirements and domain of interest. This way of personalization can improve the quality of research and learning experience by recommending courses which are otherwise overlooked by scholars, as it takes the time to go through the curriculum and finding the best possible match.
机译:本文介绍了非正规教育中,学者如何在各个领域中选择课程以满足研究目的。尽管如此,大量课程的提供使选择合适课程的过程变得繁琐,耗时且冒险的决定,并且课程选择将直接影响学者的表现。解决此类问题并产生令人满意的结果的最佳方法是使用“推荐系统”。核心的推荐系统采用信息检索技术,此类信息检索系统的持续工作是将最相关的信息传递给学习者。因此,如果推荐系统能够识别用户以查询形式表达的意图和要求,则它可以生成更多有效的推荐。本文介绍了一种N-Gram分类技术,该技术可用于根据需求和感兴趣的领域向学者提供课程建议。这种个性化方式可以通过推荐课程,从而提高研究和学习经验的质量,否则这些课程将被学者所忽略,因为这需要花费时间来学习课程并找到最佳的匹配方式。

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