BTCBMA Online Education Course Recommendation Algorithm Based on Learners' Learning Quality

Yanli Jia
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Abstract

To address the problems of existing online education curriculum recommendation methods such as low recommendation accuracy, an online education course recommendation algorithm (BTCBMA) considering learner learning quality is proposed. Firstly, the BERT model is combined with the TextCNN model to implement the preliminary extraction of text features. Secondly, the convolution neural networks and BiLSTM networks are used to capture deep features and temporal features in data. Finally, a multi-head attention mechanism is used to extract key information from learner interaction sequences, review texts, and curriculum multiple attributes. Experiments demonstrate that the accuracy, precision, recall, and F1 values of the proposed online course recommendation method in the MOOC dataset are 0.224, 0.241, 0.237, and 0.239, respectively, while in the CN dataset are 0.217, 0.239, 0.227, and 0.233, respectively, and the performance of the proposed method in online education course recommendation is significantly superior to the compared methods. For learners in online learning systems, the proposed method can effectively recommend high-quality courses, which is of great significance for improving the learning quality and learning efficiency of learners.
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基于学习者学习质量的BTCBMA在线教育课程推荐算法
针对现有在线教育课程推荐方法推荐精度低的问题,提出了一种考虑学习者学习质量的在线教育课程建议算法(BTCBMA)。首先,将BERT模型与TextCNN模型相结合,实现文本特征的初步提取。其次,使用卷积神经网络和BiLSTM网络来捕捉数据中的深度特征和时间特征。最后,使用多头注意力机制从学习者互动序列、复习文本和课程多属性中提取关键信息。实验表明,所提出的在线课程推荐方法在MOOC数据集中的准确度、精确度、召回率和F1值分别为0.224、0.241、0.237和0.239,而在CN数据集中分别为0.217、0.239、0.227和0.233,并且所提出的方法在在线教育课程推荐中的性能显著优于所比较的方法。对于在线学习系统中的学习者来说,该方法可以有效地推荐高质量的课程,对提高学习者的学习质量和学习效率具有重要意义。
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