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An Item–Item Collaborative Filtering Recommender System Using Trust and Genre to Address the Cold-Start Problem

机译:使用信任和类型来解决冷启动问题的项目项目协作过滤推荐系统

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Item-based collaborative filtering is one of the most popular techniques in the recommender system to retrieve useful items for the users by finding the correlation among the items. Traditional item-based collaborative filtering works well when there exists sufficient rating data but cannot calculate similarity for new items, known as a cold-start problem. Usually, for the lack of rating data, the identification of the similarity among the cold-start items is difficult. As a result, existing techniques fail to predict accurate recommendations for cold-start items which also affects the recommender system’s performance. In this paper, two item-based similarity measures have been designed to overcome this problem by incorporating items’ genre data. An item might be uniform to other items as they might belong to more than one common genre. Thus, one of the similarity measures is defined by determining the degree of direct asymmetric correlation between items by considering their association of common genres. However, the similarity is determined between a couple of items where one of the items could be cold-start and another could be any highly rated item. Thus, the proposed similarity measure is accounted for as asymmetric by taking consideration of the item’s rating data. Another similarity measure is defined as the relative interconnection between items based on transitive inference. In addition, an enhanced prediction algorithm has been proposed so that it can calculate a better prediction for the recommendation. The proposed approach has experimented with two popular datasets that is Movielens and MovieTweets. In addition, it is found that the proposed technique performs better in comparison with the traditional techniques in a collaborative filtering recommender system. The proposed approach improved prediction accuracy for Movielens and MovieTweets approximately in terms of 3.42%and8.58% mean absolute error, 7.25%and3.29% precision, 7.20%and7.55% recall, 8.76%and5.15% f-measure and 49.3% and 16.49% mean reciprocal rank, respectively.
机译:基于项目的协作筛选是推荐系统中最流行的技术之一,通过查找项目之间的相关性来检索用户的有用项目。当存在足够的评级数据但不能计算新项目的相似性时,传统的项目的协作过滤很好地运行良好,但是称为冷启动问题。通常,对于缺乏评级数据,识别冷启动物品之间的相似性很难。因此,现有技术未能预测对冷启动项的准确建议,这也影响了推荐系统的性能。在本文中,旨在通过结合物品的类型数据来克服这一问题的基于项目的相似度措施。一个项目可能是均匀的其他项目,因为它们可能属于多个常见类型。因此,通过考虑其常见类型的关联来确定项目之间的直接不对称相关程度来定义其中一个相似度措施。然而,在几个项目中可以是冷启动的几个项目之间确定相似性,并且另一个项目可以是任何高评级的项目。因此,通过考虑项目的评级数据,所提出的相似度测量被占用了不对称。另一个相似度测量被定义为基于递词推断的项目之间的相对互连。另外,已经提出了增强的预测算法,以便它可以计算推荐的更好预测。所提出的方法已经尝试了两个流行的数据集,这是Movielens和Movieweets。此外,发现该技术与协同过滤推荐系统中的传统技术相比,该技术更好地执行。提出的方法提高了大约为3.42%和8.58%的平均绝对误差,7.25%和3.29%精度,7.20%和7.55%召回,8.76%和5.15%F测量49.3%和16.49%平均互核等级。

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