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An Euclidean similarity measurement approach for hotel rating data analysis

机译:欧氏相似度测量方法用于酒店评价数据分析

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The most widely used method in recommendation systems is collaborative filtering, of which, a critical step is to analyze a user's preferences and make recommendations of products or services based on similarity analysis with other users' ratings. However, collaborative filtering is less usable for recommendation facing the “cold start” problem, i.e. few comments being given to products or services. To tackle this problem, we propose an improved method that combines collaborative filtering and data classification. We use hotel recommendation data to test the proposed method. The accuracy of the recommendation is determined by the rankings. Evaluations regarding the accuracies of Top-3 and Top-10 recommendation lists using the 10-fold cross-validation method and ROC curves are conducted. The results show that the Top-3 hotel recommendation list proposed by the combined method has the superiority of the recommendation performance than the Top-10 list under the cold start condition in most of the times.
机译:推荐系统中使用最广泛的方法是协作过滤,其中的关键步骤是分析用户的偏好并基于与其他用户评级的相似性分析来推荐产品或服务。但是,协作过滤对于面对“冷启动”问题的建议不太有用,即对产品或服务的评论很少。为了解决此问题,我们提出了一种将协作过滤和数据分类相结合的改进方法。我们使用酒店推荐数据来测试所提出的方法。推荐的准确性取决于排名。使用10倍交叉验证方法和ROC曲线对前三名和前十名推荐列表的准确性进行评估。结果表明,在冷启动条件下,组合方法提出的前三名酒店推荐列表比前十名列表具有更好的推荐性能。

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