Wang Yan, Ma Xiao Feng, Zhu Miao
Teaching Affairs Office, Capital Medical University, Beijing, China.
Chengfang Technology Co., Ltd, Guangzhou, Guangdong, China.
PeerJ Comput Sci. 2024 Jul 30;10:e2010. doi: 10.7717/peerj-cs.2010. eCollection 2024.
Personalized learning resource recommendations may help resolve the difficulties of online education that include learning mazes and information overload. However, existing personalized learning resource recommendation algorithms have shortcomings such as low accuracy and low efficiency. This study proposes a deep recommendation system algorithm based on a knowledge graph (D-KGR) that includes four data processing units. These units are the recommendation unit (RS unit), the knowledge graph feature representation unit (KGE unit), the cross compression unit (CC unit), and the feature extraction unit (FE unit). This model integrates technologies including the knowledge graph, deep learning, neural network, and data mining. It introduces cross compression in the feature learning process of the knowledge graph and predicts user attributes. Multimodal technology is used to optimize the process of project attribute processing; text type attributes, multivalued type attributes, and other type attributes are processed separately to reconstruct the knowledge graph. A convolutional neural network algorithm is introduced in the reconstruction process to optimize the data feature qualities. Experimental analysis was conducted from two aspects of algorithm efficiency and accuracy, and the particle swarm optimization, neural network, and knowledge graph algorithms were compared. Several tests showed that the deep recommendation system algorithm had obvious advantages when the number of learning resources and users exceeded 1,000. It has the ability to integrate systems such as the particle swarm optimization iterative classification, neural network intelligent simulation, and low resource consumption. It can quickly process massive amounts of information data, reduce algorithm complexity and requires less time and had lower costs. Our algorithm also has better efficiency and accuracy.
个性化学习资源推荐可能有助于解决在线教育的难题,这些难题包括学习迷宫和信息过载。然而,现有的个性化学习资源推荐算法存在诸如准确率低和效率低等缺点。本研究提出了一种基于知识图谱的深度推荐系统算法(D-KGR),该算法包括四个数据处理单元。这些单元分别是推荐单元(RS单元)、知识图谱特征表示单元(KGE单元)、交叉压缩单元(CC单元)和特征提取单元(FE单元)。该模型集成了包括知识图谱、深度学习、神经网络和数据挖掘等技术。它在知识图谱的特征学习过程中引入交叉压缩并预测用户属性。采用多模态技术优化项目属性处理过程;分别处理文本类型属性、多值类型属性和其他类型属性以重构知识图谱。在重构过程中引入卷积神经网络算法以优化数据特征质量。从算法效率和准确率两个方面进行了实验分析,并比较了粒子群优化算法、神经网络算法和知识图谱算法。多项测试表明,当学习资源和用户数量超过1000时,深度推荐系统算法具有明显优势。它具有集成粒子群优化迭代分类、神经网络智能模拟等系统的能力,且资源消耗低。它能够快速处理海量信息数据,降低算法复杂度,所需时间少且成本低。我们的算法也具有更好的效率和准确率。