Online English teaching resource recommendation method design based on LightGCNCSCM

IF 3.6
Jing Tang
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引用次数: 0

Abstract

With the explosive growth of online English teaching resources, how to achieve personalized and high-quality resource recommendations has become a key issue that needs to be urgently solved. Existing methods have significant limitations in aspects such as cold start scenarios, semantic feature fusion, and the balance between computational efficiency and recommendation quality. The research proposes an online English teaching resource recommendation method. The local and global features of the user-resource interaction graph are captured through Lightweight graph convolutional networks, and the resource semantic vectors are extracted in combination with the content-based similarity calculation model. This can synergistically optimize behavior structure and content semantics. Experiment results show that this method significantly improves the recommendation quality in the cold start scenario. It balances the novelty of recommendation results and user preference matching through a dynamic weight allocation mechanism, while maintaining relatively low computational complexity. This method provides an efficient and robust personalized recommendation solution for online education platforms.
基于LightGCNCSCM的在线英语教学资源推荐方法设计
随着在线英语教学资源的爆发式增长,如何实现个性化、高质量的资源推荐成为急需解决的关键问题。现有方法在冷启动场景、语义特征融合、计算效率和推荐质量之间的平衡等方面存在明显的局限性。本研究提出了一种在线英语教学资源推荐方法。通过轻量级图卷积网络捕获用户资源交互图的局部和全局特征,并结合基于内容的相似度计算模型提取资源语义向量。这可以协同优化行为结构和内容语义。实验结果表明,该方法显著提高了冷启动场景下的推荐质量。它通过动态权重分配机制平衡推荐结果的新颖性和用户偏好匹配,同时保持相对较低的计算复杂度。该方法为在线教育平台提供了一种高效、鲁棒的个性化推荐方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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