DHM-OCR

Sagar Mekala, Padma Tns, Rama Rao Tandu
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引用次数: 0

摘要

近年来,帮助学习者提高技能的在线教育资源越来越多。然而,由于不同知识领域的学习者有不同的需求和需要,因此很难从现有的在线教育资源中选择合适的课程。为了解决这个问题,在线课程推荐模型的一个重要因素就是提高学习者的知识水平。现有的许多推荐系统(RS)都采用协同过滤(CF)技术向学习者推荐课程。协同过滤推荐系统(CFRS)的主要问题是偏好稀疏和数据的可扩展性。根据项目的相似性,人们提出并开发了许多推荐模型,但这些模型都不能在没有用户关联或偏好的情况下向用户提供建议。我们提出了一种深度混合模型-在线课程推荐(DHM-OCR),它使用了高层次的学习者行为和课程目标特征。我们展示了该模型在在线电子学习课程推荐方面的改进和效率。根据分析和评估结果,我们的 DHM-OCR 似乎优于并行研究的推荐系统。在线课程数据的实验结果表明,建议的模型和方法显著提高了分类准确性和训练效率,尤其是在可用数据有限的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DHM-OCR
In recent years, there has been an increase in online education resources to help learners improve their skills. However, it is difficult to select the right course from available online education resources due to the demands and needs of learners with different knowledge domains. To solve this problem, an online course recommendation model has the important factor of enhancing learner's knowledge. Many existing recommendation systems (RS) use collaborative filtering (CF) to recommend courses to learners. The major problems with the Collaborative Filtering Recommendation System (CFRS) are the sparse preferences and the scalability of the data. According to the similarity of items, many recommendation models are proposed and developed, but none of these provide suggestions to users without their associations or preferences. We propose a deep hybrid model-online course recommendation (DHM-OCR) that uses high-level learner behavior and course objective features. We demonstrate the improvements and efficiency of the model for suggesting online e-learning courses. According to the analysis and evaluation results, it seems that our DHM-OCR outperforms the parallel research recommendation system. Experimental findings from online course data reveal that the suggested model and approach significantly improve classification accuracy and training efficiency, particularly limited available data.
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