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Improving Accuracy and Scalability of Personal Recommendation Based on Bipartite Network Projection

机译:基于双向网络投影的个人推荐的准确性和可扩展性

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Bipartite network projection method has been recently employed for personal recommendation. It constructs a bipartite network between users and items. Treating user taste for items as resource in the network, we allocate the resource via links between user nodes and item nodes. However, the taste model employed by existing algorithms cannot differentiate “dislike” and “unrated” cases implied by user ratings. Moreover, the distribution of resource is solely based on node degrees, ignoring the different transfer rates of the links. To enhance the performance, this paper devises a negative-aware and rating-integrated algorithm on top of the baseline algorithm. It enriches the current user taste model to encompass “like,” “dislike,” and “unrated” information from users. Furthermore, in the resource distribution stage, we propose to initialize the resource allocation according to user ratings, which also determines the resource transfer rates on links afterward. Additionally, we also present a scalable implementation in the MapReduce framework by parallelizing the algorithm. Extensive experiments conducted on real data validate the effectiveness and efficiency of the proposed algorithms.
机译:双向网络投影方法最近已被用于个人推荐。它在用户和项目之间构建了双向网络。将项目的用户喜好视为网络中的资源,我们通过用户节点和项目节点之间的链接分配资源。但是,现有算法采用的口味模型无法区分用户评分所隐含的“不喜欢”和“未评分”情况。而且,资源的分配仅基于节点度,而忽略了链路的不同传输速率。为了提高性能,本文在基线算法的基础上设计了一种负感知和等级综合的算法。它丰富了当前的用户喜好模型,以包含来自用户的“喜欢”,“不喜欢”和“未分级”信息。此外,在资源分配阶段,我们建议根据用户等级初始化资源分配,这也决定了以后链路上的资源传输速率。此外,我们还通过并行化算法在MapReduce框架中提出了可扩展的实现。在真实数据上进行的大量实验验证了所提出算法的有效性和效率。

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