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Personalized Recommendation Model: An Online Comment Sentiment Based Analysis

机译:个性化推荐模式:基于在线评论情绪分析

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Traditional recommendation algorithms measure users’ online ratings of goods and services but ignore the information contained in written reviews, resulting in lowered personalized recommendation accuracy. Users’ reviews express opinions and reflect implicit preferences and emotions towards the features of products or services. This paper proposes a model for the fine-grained analysis of emotions expressed in users’ online written reviews, using film reviews on the Chinese social networking site Douban.com as an example. The model extracts feature-sentiment word pairs in user reviews according to four syntactic dependencies, examines film features, and scores the sentiment values of film features according to user preferences. User group personalized recommendations are realized through user clustering and user similarity calculation. Experiments show that the extraction of user feature-sentiment word pairs based on four syntactic dependencies can better identify the implicit preferences of users, apply them to recommendations and thereby increase recommendation accuracy.
机译:传统推荐算法衡量用户的商品和服务在线评级,但忽略了书面评论中包含的信息,从而降低了个性化推荐准确性。用户评论表达意见,并反映了对产品或服务功能的隐性偏好和情感。本文提出了一种模型,用于在用户在线书面评论中表达的细粒度分析,使用电影Quance审查Douban.com作为一个例子。模型提取特征情绪字对对用户评论根据四个语法依赖项,检查胶片功能,并根据用户偏好进行胶片功能的情感值。用户组通过用户群集和用户相似性计算实现个性化建议。实验表明,基于四个句法依赖性的用户特征情绪字对的提取可以更好地识别用户的隐式偏好,将它们应用于推荐,从而提高推荐准确性。

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