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Evaluating the Similarity Estimator Component of the TWIN Personality-based Recommender System

机译:评估基于TWIN个性推荐系统的TWIN相似度估算器组件

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With the constant increase in the amount of information available in online communities, the task of building an appropriate Recommender System to support the user in her decision making process is becoming more and more challenging. In addition to the classical collaborative filtering and content based approaches, taking into account ratings, preferences and demographic characteristics of the users, a new type of Recommender System, based on personality parameters, has been emerging recently. In this paper we describe the TWIN (Tell Me What I Need) Personality Based Recommender System, and report on our experiments and experiences of utilizing techniques which allow the extraction of the personality type from text (following the Big Five model popular in the psychological research). We estimate the possibility of constructing the personality-based Recommender System that does not require users to fill in personality questionnaires. We are applying the proposed system in the online travelling domain to perform TripAdvisor hotels recommendation by analysing the text of user generated reviews, which are freely accessible from the community website.
机译:随着在线社区中可用信息量的不断增加,构建适当的推荐系统以支持用户的决策过程的任务变得越来越具有挑战性。除了经典的协作过滤和基于内容的方法之外,考虑到用户的等级,偏好和人口统计学特征,最近还出现了一种基于个性参数的新型推荐系统。在本文中,我们描述了基于TWIN(告诉我我想要的)基于个性的推荐系统,并报告了我们的实验和利用技术的经验,这些技术允许从文本中提取个性类型(遵循心理学研究中流行的五种模式) )。我们估计构建基于个性的推荐系统的可能性,该系统不需要用户填写个性问卷。我们正在将建议的系统应用于在线旅游领域,通过分析用户生成的评论文本来执行TripAdvisor酒店推荐,这些评论可从社区网站免费访问。

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