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Reviewer Credibility and Sentiment Analysis Based User Profile Modelling for Online Product Recommendation

机译:基于审阅者可信度和情感分析在线产品推荐的基于用户配置文件建模

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摘要

Deciphering user purchase preferences, their likes and dislikes is a very tricky task even for humans, making its automation a very complex job. This research work augments heuristic-driven user interest profiling with reviewer credibility analysis and fine-grained feature sentiment analysis to devise a robust recommendation methodology. The proposed credibility, interest and sentiment enhanced recommendation (CISER) model has five modules namely candidate feature extraction, reviewer credibility analysis, user interest mining, candidate feature sentiment assignment and recommendation module. Review corpus is given as an input to the CISER model. Candidate feature extraction module uses context and sentiment confidence to extract features of importance. To make our model robust to fake and unworthy reviews and reviewers, reviewer credibility analysis proffers an approach of associating expertise, trust and influence scores with reviewers to weigh their opinion according to their credibility. The user interest mining module uses aesthetics of review writing as heuristics for interest-pattern mining. The candidate feature sentiment assignment module scores candidate features present in review based on their fastText sentiment polarity. Finally, the recommendation module uses credibility weighted sentiment scoring of user preferred features for purchase recommendations. The proposed recommendation methodology harnesses not only numeric ratings, but also sentiment expressions associated with features, customer preference profile and reviewer credibility for quantitative analysis of various alternative products. The mean average precision (MAP@1) for CISER is 93% and MAP@3 is 49%, which is better than current state-of-the-art systems.
机译:解密用户购买偏好,他们的喜欢和不喜欢的是一个非常棘手的任务,即使是人类,也使其自动化成为一个非常复杂的工作。本研究工作增强了启发式驱动的用户兴趣分析,并通过审阅者可信度分析和细粒度的特色情感分析来设计强大的推荐方法。拟议的可信度,兴趣和情感增强建议(CISER)模型有五个模块即候选功能提取,审稿人可信度分析,用户兴趣挖掘,候选功能情绪分配和推荐模块。 Review Corpus作为Ciser模型的输入给出。候选特征提取模块使用上下文和情感信心提取重要性的特征。为了使我们的模型对假冒和不值得的评论和评论者强大,审稿人可信度分析专业提出了一种将专业知识,信任和影响成绩与审稿人联系起来,以根据其可信度来权衡他们的意见。用户兴趣挖掘模块使用审查写作的美学作为兴趣模式挖掘的启发式。候选特征情感分配模块基于它们的快速文本情感极性评分审查中存在的候选特征。最后,推荐模块使用可信度加权情绪评分用户首选功能进行购买建议。拟议的推荐方法不仅利用数字评级,还要与各种替代产品的定量分析相关的特征,客户偏好配置文件和审阅者可信度相关。 Ciser的平均平均精度(MAP @ 1)是93%,地图@ 3为49%,比当前最先进的系统更好。

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