Huai'an Campus of Nanjing Forestry University, Nanjing, Jiangsu 210037, China.
School of Mechatronics and Information, Wuxi Vocational Institute of Arts and Technology, Yixing 214206, China.
Comput Intell Neurosci. 2022 Sep 20;2022:2192459. doi: 10.1155/2022/2192459. eCollection 2022.
In order to overcome the problems of low accuracy, low recommendation efficiency, and low user satisfaction of educational resources recommendation algorithm, this paper proposes a personalized recommendation algorithm for online educational resources based on knowledge association. Firstly, online education resources are collected according to association rules. Secondly, firefly algorithm is used to classify online education resources. Then, the vector space function is constructed to filter the classified online education resources. Finally, the correlation between knowledge points is calculated by knowledge association theory, and the knowledge with the highest user interest is selected as the target recommendation resource to realize the personalized recommendation of online education resources. The resource recommendation accuracy of this method can reach 97%, the recommendation time is less than 5.0 s, and users are more satisfied with it, indicating that its recommendation effect is good.
为了解决教育资源推荐算法准确性低、推荐效率低和用户满意度低的问题,本文提出了一种基于知识关联的在线教育资源个性化推荐算法。首先,根据关联规则收集在线教育资源。其次,使用萤火虫算法对在线教育资源进行分类。然后,构建向量空间函数来筛选分类后的在线教育资源。最后,通过知识关联理论计算知识点之间的相关性,选择用户兴趣最高的知识作为目标推荐资源,实现在线教育资源的个性化推荐。该方法的资源推荐准确率可达 97%,推荐时间小于 5.0s,用户满意度更高,表明其推荐效果良好。