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引用次数: 33
摘要
所谓的推荐系统的出现,有可能减少个人在网上资源中搜索所经历的信息过载。推荐系统的应用领域之一是在线旅游领域,像TripAdvisor这样的网站允许人们发布对各种酒店的评论,以帮助其他人在计划旅行时做出正确的选择。由于此类评论的数量每天都在增长,显然,让个人浏览所有这些评论是不切实际的。我们提出了TWIN(“Tell me What I Need”)基于个性的推荐系统,该系统分析评论的文本内容,并根据Big Five模型估计用户的个性,以推荐“双心人”撰写的评论。在本文中,我们比较了一些算法,以选择更好的选项来进行用户档案构建任务中的人格估计。
A comparative evaluation of personality estimation algorithms for the twin recommender system
The appearance of the so-called recommender systems has led to the possibility of reducing the information overload experienced by individuals searching among online resources. One of the areas of application of recommender systems is the online tourism domain where sites like TripAdvisor allow people to post reviews of various hotels to help others make a good choice when planning their trip. As the number of such reviews grows in size every day, clearly it is impractical for the individual to go through all of them. We propose the TWIN ("Tell me What I Need") Personality-based Recommender System that analyzes the textual content of the reviews and estimates the personality of the user according to the Big Five model to suggest the reviews written by "twin-minded" people. In this paper we compare a number of algorithms to select the better option for personality estimation in the task of user profile construction.