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A hybrid recommender system for the mining of consumer preferences from their reviews

机译:一个混合推荐系统,用于从他们的评论中挖掘消费者偏好

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摘要

Product review sites are widespread on the Internet and are rapidly gaining in popularity among consumers. This already large volume of user-generated content is dramatically growing every day, making it hard for consumers to filter out the worthwhile information which appears on the various review sites. There commendation system plays a significant role in solving the problem of information overload. This study proposes a framework which integrates a collaborative filtering approach and an opinion mining technique for movie recommendation. Within the proposed framework, sentiment analysis is first applied to the users' reviews to detect consumer opinions about the movie they have watched and to explore the individual's preference profile. Traditional recommendation models are overly dependent on preference ratings and often suffer from the problem of 'data sparsity'. Experimental results obtained from real online reviews show that our proposed method is effective in dealing with insufficient data and is more accurate and efficient than existing traditional methods.
机译:产品审查网站在互联网上普遍存在,在消费者中迅速地获得普及。这已经大量的用户生成的内容每天都大大增长,使消费者难以过滤出各种审查网站上出现的有价值信息。有值得体系在解决信息过载问题方面发挥着重要作用。本研究提出了一种框架,该框架集成了合作过滤方法和电影推荐的意见采矿技术。在拟议的框架内,感兴趣分析首先应用于用户的评论,以检测他们观看的电影和探索个人的偏好配置文件的消费者意见。传统推荐模型过于依赖于优先权评级,并且经常遭受“数据稀疏性”的问题。真实在线评论中获得的实验结果表明,我们的提出方法在处理不足的数据方面是有效的,并且比现有的传统方法更准确和高效。

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