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A Jaccard base similarity measure to improve performance of CF based recommender systems

机译:基于Jaccard的相似性度量可提高基于CF的推荐系统的性能

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Revolution in social computing has resulted in the wonderful evolution of recommender systems. Recommender systems maintain a repository of user profiles, created by a community of users, for generating personalized recommendations aimed at individual users. One of the approaches used in recommender systems is collaborative filtering (CF) which has become one of the most famous approaches for providing personalized recommendations to users. Nearest neighbors based methods used in CF are being widely used by many online stores to enhance users shopping experience. Nearest neighbors-based CF methods use some similarity measure techniques to find similar users/items for an active user/item. Almost all similarity measurement methods use ratings of commonly rated items while calculating similarity between a pair of users/items. Our approach works in the same manner as Jaccard similarity works. But Jaccard similarity does not consider the absolute value of rating and only considers the ratio of co-rated items. We take into account the ratio of absolute rating values which are equal in value, to the total no of co-rated items. An additional argument we take into account is the average rating value of users. We compared performance of our proposed method with many state-of-the-art similarity measures. Recommendation results from a set of real data sets show that our proposed measure has some performance improvement in terms of Mean Absolute Error (MAE) and Root Mean Square Error (RMSE).
机译:社交计算的革命导致了推荐系统的惊人发展。推荐系统维护由用户社区创建的用户配置文件存储库,用于生成针对单个用户的个性化推荐。推荐系统中使用的一种方法是协作过滤(CF),它已成为向用户提供个性化推荐的最著名方法之一。 CF中使用的基于最近邻居的方法已被许多在线商店广泛使用,以增强用户的购物体验。基于最近邻居的CF方法使用一些相似性度量技术来为活动用户/项目找到相似的用户/项目。几乎所有相似度度量方法都在计算一对用户/项目之间的相似度时使用共同评级项目的等级。我们的方法与Jaccard相似性的工作方式相同。但是,Jaccard相似度不考虑评分的绝对值,而仅考虑共同评分项目的比率。我们考虑了价值相等的绝对评级值与共同评级项目总数之比。我们要考虑的另一个参数是用户的平均评分值。我们将我们提出的方法的性能与许多最新的相似性度量进行了比较。来自一组实际数据集的建议结果表明,我们提出的措施在平均绝对误差(MAE)和均方根误差(RMSE)方面具有一定的性能改进。

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