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Sentiment based multi-index integrated scoring method to improve the accuracy of recommender system

机译:基于情绪的多指标综合评分方法,提高推荐系统的准确性

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摘要

To the best of our knowledge, few studies have focused on the inconsistency between user ratings and reviews as well as natural noise management in recommender systems (RSs). To address these issues, this study introduces a sentiment based multi-index integrated scoring method to provide a reliable information input that reflects comprehensive user preferences for recommendation algorithms and facilitate improved performance. Initially, Bing Liu's lexicon is expanded using a semi-supervised learning technique to obtain additional sentiment words and calculate the sentiment scores of reviews; then a normalized sentiment score method based on sigmoid function that considers the emotional tendencies of different users in reviews is designed to convert the scores into values corresponding to the rating scale of RS. Subsequently, a degree classification criteria approach is adopted to assign users and items to more fine-grained classes Further, a natural noise detection method is exploited to identify and correct noise ratings according to classification conditions. To effectively integrate normalized review and denoised rating information, two factors, user consistency and review feedback, are considered to obtain the importance of reviews and ratings; then, a weighted average method is used to generate a set of comprehensive ratings. The experimental results on two benchmark datasets indicate that the superiority of memory-based or model-based collaborative filtering methods (CFs) using comprehensive ratings over their respective methods using original ratings is determined by various accuracy metrics, which demonstrates that our scheme can enhance the reliability and accuracy of user information. Thus, the proposed scheme provides new insights for improving the accuracy of RSs from the perspective of multiple information sources. Additionally, this method exhibits good generalizability and practicality.
机译:据我们所知,很少有研究专注于用户评级和评论之间的不一致以及推荐系统(RSS)的自然噪声管理。为了解决这些问题,本研究介绍了一种基于情绪的多索引综合评分方法,以提供可靠的信息输入,反映了用于推荐算法的全面用户偏好,并促进改进的性能。最初,Bing Liu的Lexicon使用半监督学习技术扩展,以获得额外的情绪词语并计算评论的情绪分数;然后,基于SIGMOID函数的标准化情绪评分方法,以审查的评论中不同用户的情绪倾向旨在将分数转换为与Rs额定值相对应的值。随后,采用学位分类标准方法进一步将用户和项目分配给更细粒度的类别,利用自然噪声检测方法根据分类条件来识别和校正噪声额定值。为了有效地整合规范化审查和去噪评级信息,两个因素,用户一致性和审查反馈,被认为是获得评论和评级的重要性;然后,使用加权平均方法来产生一组综合评级。两个基准数据集的实验结果表明,使用原始额定值的各自方法使用综合评级的基于内存或基于模型的协作滤波方法(CFS)的优越性由各种精度度量决定,这表明我们的方案可以增强用户信息的可靠性和准确性。因此,所提出的方案提供了从多个信息源的角度提高RS的准确性的新见解。另外,该方法表现出良好的普遍性和实用性。

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