Yan Ke
Department of Public Instruction, Nanyang Medical College, Nanyang, 473000, Henan, China.
Heliyon. 2024 Apr 26;10(9):e30413. doi: 10.1016/j.heliyon.2024.e30413. eCollection 2024 May 15.
To comprehend the genuine reading habits and preferences of diverse user cohorts and furnish tailored reading recommendations, this study introduces an English text reading recommendation model designed specifically for long-tail users. This model integrates collaborative filtering algorithms with the FastText classification method. Initially, the integrated collaborative filtering algorithm is explicated, followed by the calculation of the user's interest distribution across various types of English texts, achieved through an enhanced Ebbinghaus forgetting curve and analysis of user reading behaviors. Subsequently, an intelligent English text reading recommendation is generated by amalgamating collaborative filtering algorithms with association rule-based recommendation algorithms. Through optimization of the recommendation generation process, the model's recommendation accuracy is enhanced, thereby augmenting the performance and user satisfaction of the recommendation system. Finally, a comparative analysis is conducted with respect to the Top-N algorithm model, matrix factorization-based algorithm model, and FastText classification model, illustrating the superior recommendation accuracy and F-Measure value of the proposed model. The study findings indicate that when the recommendation list contains 10, 30, 50, and 70 texts, the recommendation accuracy of the proposed algorithm model is 0.75, 0.79, 0.8, and 0.74, respectively, outperforming other algorithms. Furthermore, as the number of texts increases, the F-Measure of all four models gradually improves, with the final F-Measure of the proposed model reaching 0.81. Notably, the F-Measure of the English text reading recommendation model proposed in this study significantly surpasses that of the other three recommendation methods. Demonstrating commendable performance in recall rate, root mean square error, normalized cumulative gain, precision, and accuracy, the model adeptly reflects user reading interests, thereby enhancing the accuracy of text recommendations and the overall system performance. The study findings offer crucial insights and guidance for enhancing the accuracy and overall efficacy of English text recommendation systems.
为了理解不同用户群体的真实阅读习惯和偏好,并提供个性化的阅读推荐,本研究引入了一种专门为长尾用户设计的英文文本阅读推荐模型。该模型将协同过滤算法与FastText分类方法相结合。首先阐述了集成的协同过滤算法,然后通过增强的艾宾浩斯遗忘曲线和用户阅读行为分析,计算用户在各类英文文本上的兴趣分布。随后,将协同过滤算法与基于关联规则的推荐算法相结合,生成智能英文文本阅读推荐。通过优化推荐生成过程,提高了模型的推荐准确性,从而提升了推荐系统的性能和用户满意度。最后,与Top-N算法模型、基于矩阵分解的算法模型和FastText分类模型进行了对比分析,结果表明所提模型具有更高的推荐准确性和F值。研究结果表明,当推荐列表包含10、30、50和70篇文本时,所提算法模型的推荐准确率分别为0.75、0.79、0.8和0.74,优于其他算法。此外,随着文本数量的增加,所有四个模型的F值都逐渐提高,所提模型的最终F值达到0.81。值得注意的是,本研究提出的英文文本阅读推荐模型的F值显著超过其他三种推荐方法。该模型在召回率、均方根误差、归一化累积增益、精确率和准确率方面表现出色,能够很好地反映用户的阅读兴趣,从而提高文本推荐的准确性和整个系统的性能。研究结果为提高英文文本推荐系统的准确性和整体效能提供了重要的见解和指导。