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Improving neighbor-based collaborative filtering by using a hybrid similarity measurement

机译:通过使用混合相似度测量改进基于邻居的协作滤波

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Memory-based collaborative filtering is one of the recommendation system methods used to predict a user's rating or preference by exploring historic ratings, but without incorporating any content information about users or items. It can be either item-based or user-based. Taking item-based Collaborative Filtering (CF) as an example, the way it makes predictions is accomplished in 2 steps: first, it selects based on pair-wise similarities a number of most similar items to the predicting item from those that the user has already rated on. Second, it aggregates the user's opinions on those most similar items to predict a rating on the predicting item. Thus, similarity measurement determines which items are similar, and plays an important role on how accurate the predictions are. Many studies have been conducted on memory-based CFs to improve prediction accuracy, but none of them have achieved better prediction accuracy than state-of-the-art model-based CFs. In this paper, we proposed a new approach that combines both structural and rating-based similarity measurement. We found that memory-based CF using combined similarity measurement can achieve better prediction accuracy than model-based CFs in terms of lower MAE and reduce memory and time by using less neighbors than traditional memory-based CFs on MovieLens and Netflix datasets. (c) 2020 Elsevier Ltd. All rights reserved.
机译:基于内存的协作过滤是用于通过探索历史评级来预测用户评级或偏好的推荐系统方法之一,但不纳入有关用户或项目的任何内容信息。它可以是基于项目的或基于用户的。以项目为基础的协作筛选(CF)作为示例,它使预测的方式在2个步骤中完成:首先,它基于对与用户具有的预测项的一系列最相似的项目选择对预测项的数量已经评估了。其次,它聚合了用户对这些最相似的项目的意见,以预测预测项目的评级。因此,相似度测量确定哪些项目类似,并且在预测是准确的情况下起重要作用。已经在基于记忆的CFS上进行了许多研究以提高预测精度,但是它们都没有比最先进的基于模型的CFS实现更好的预测精度。在本文中,我们提出了一种新的方法,它结合了基于结构和额定值的相似度测量。我们发现,使用组合相似度测量的基于内存的CF可以实现比基于模型的CFS的更好的预测精度,而不是使用比Movielens和Netflix数据集上的传统内存的CFS更少的邻居减少内存和时间。 (c)2020 elestvier有限公司保留所有权利。

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