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A Collaborative Recommend Algorithm Based on Bipartite Community

机译:基于二分区的协作推荐算法

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摘要

The recommendation algorithm based on bipartite network is superior to traditional methods on accuracy and diversity, which proves that considering the network topology of recommendation systems could help us to improve recommendation results. However, existing algorithms mainly focus on the overall topology structure and those local characteristics could also play an important role in collaborative recommend processing. Therefore, on account of data characteristics and application requirements of collaborative recommend systems, we proposed a link community partitioning algorithm based on the label propagation and a collaborative recommendation algorithm based on the bipartite community. Then we designed numerical experiments to verify the algorithm validity under benchmark and real database.
机译:基于二分网络的推荐算法优于传统的准确性和多样性方法,证明考虑推荐系统的网络拓扑可以帮助我们提高推荐结果。然而,现有的算法主要关注整体拓扑结构,并且这些局部特征也可能在协同推荐处理中发挥重要作用。因此,由于对协作推荐系统的数据特征和应用要求,我们提出了一种基于标签传播的链路社区分区算法和基于二分区的协作推荐算法。然后我们设计了数字实验,以验证基准和真实数据库下的算法有效性。

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