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Improved Network-Based Recommendation Algorithm

机译:改进的基于网络的推荐算法

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Recently, personalized recommender systems have become indispensable in a wide variety of commercial applications due to the vast amount of overloaded information. Network-based recommendation algorithms for user-object link predictions have achieved significant developments. But most previous researches on network-based algorithm tend to ignore users’ explicit ratings for objects or only select users’ higher ratings which lead to the loss of information and even sparser data. With this understanding, we propose an improved network-based recommendation algorithm. In the process of reallocation of user’s recommendation power, this paper originally transfers users’ explicit scores to users’ interest similarity and user’s representativeness. Finally, we validate the proposed approach by performing large-scale random sub-sampling experiments on a widely used data set (Movielens) and compare our method with two other algorithms by two accuracy criteria. Results show that our approach significantly outperforms other algorithms.
机译:近来,由于大量的信息过载,个性化推荐系统已在各种商业应用中变得必不可少。用于用户-对象链接预测的基于网络的推荐算法已经取得了重大进展。但是,以前有关基于网络的算法的大多数研究都倾向于忽略用户对对象的明确评分,或者仅选择用户的较高评分,这会导致信息丢失甚至稀疏数据。基于这种理解,我们提出了一种改进的基于网络的推荐算法。在重新分配用户推荐力的过程中,本文最初将用户的显式分数转换为用户的兴趣相似度和用户代表性。最后,我们通过对广泛使用的数据集(Movielens)进行大规模随机子采样实验来验证所提出的方法,并通过两个准确性标准将我们的方法与其他两种算法进行比较。结果表明,我们的方法明显优于其他算法。

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