An Explainable Educational Resource Recommendation Model Based on Matrix Factorization

Xiaolin Gui, Fuying Wu, Xiaoyan Liu, Yugen Yi, Zhenzhen Luo, Bing Li
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Abstract

The recommendation algorithm based on hidden variables are widely used in educational resource recommendation systems. However, such algorithms and their recommendation results lack explainability, which affects the application effect of recommendation. Therefore, we propose an explainable educational resource recommendation (EERR) model to solve this problem. The model is constructed by three steps. To begin with, we extract explainable features from educational resource manually. Then, the recessive feature is correlated with explicit feature by using of matrix decomposition. Finally, the alternating least square algorithm is used to obtain the recommended results. Experiment results show that the proposed model has better performance under the RMSE evaluation criteria, and it can improve users' trust in the recommendation system.
基于矩阵分解的可解释教育资源推荐模型
基于隐变量的推荐算法在教育资源推荐系统中得到了广泛应用。然而,这些算法及其推荐结果缺乏可解释性,影响了推荐的应用效果。因此,我们提出一个可解释的教育资源推荐(EERR)模型来解决这个问题。模型的构建分为三个步骤。首先,我们从教育资源中手动提取可解释的特征。然后,利用矩阵分解将隐性特征与显式特征进行关联。最后,采用交替最小二乘算法得到推荐结果。实验结果表明,该模型在RMSE评价准则下具有较好的性能,能够提高用户对推荐系统的信任度。
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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