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Collaborative filtering recommendation algorithm based on user correlation and evolutionary clustering

机译:基于用户相关性和进化聚类的协同过滤推荐算法

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In recent years, application of recommendation algorithm in real life such as Amazon, Taobao is getting universal, but it is not perfect yet. A few problems need to be solved such as sparse data and low recommended accuracy. Collaborative filtering is a mature algorithm in the recommended systems, but there are still some problems. In this paper, a novel collaborative filtering recommendation algorithm based on user correlation and evolutionary clustering is presented. Firstly, score matrix is pre-processed with normalization and dimension reduction, to obtain denser score data. Based on these processed data, clustering principle is generated and dynamic evolutionary clustering is implemented. Secondly, the search for the nearest neighbors with highest similar interest is considered. A measurement about the relationship between users is proposed, called user correlation, which applies the satisfaction of users and the potential information. In each user group, user correlation is applied to choose the nearest neighbors to predict ratings. The proposed method is evaluated using the Movielens dataset. Diversity experimental results demonstrate that the proposed method has outstanding performance in predicted accuracy and recommended precision.
机译:近年来,推荐算法在亚马逊,淘宝等现实生活中的应用正在普及,但还不完善。需要解决一些问题,例如数据稀疏和推荐精度低。在推荐的系统中,协同过滤是一种成熟的算法,但是仍然存在一些问题。提出了一种基于用户相关性和进化聚类的协同过滤推荐算法。首先,对分数矩阵进行归一化和降维处理,以获得更密集的分数数据。基于这些处理后的数据,生成聚类原理并实现动态进化聚类。其次,考虑寻找具有最高相似兴趣的最近邻居。提出了一种关于用户之间关系的度量,称为用户关联,该度量适用于用户的满意度和潜在信息。在每个用户组中,应用用户关联来选择最近的邻居来预测收视率。使用Movielens数据集评估提出的方法。多样性实验结果表明,该方法在预测精度和推荐精度上均具有优异的性能。

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