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Scholar Recommendation Model in Large Scale Academic Social Networking Platform

机译:大型学术社交网络平台中的学者推荐模型

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A scholar-recommended model based on community division is established due to the characteristics of social intercourse of academic social network. The model was developed by GraphChi, the single version of large-scale graphic computing system which was launched by GraphLab, to find the core network in parallel on network topology map. In the established network, using self-adaptive label transmission to create labels and then according to the number of labels on the nodes to get final results of community division. Calculation is done within the community for expert recommendation services. The experiment of data-set on academic social networking platform, SCHOLAT, suggests, models not only can create community quickly, but also can gain good recommendation results by all the three personalized methods, i.e. Community Weight Recommended (CWR), Community Random Recommended (CRR) and Acquaintance Community Recommended (ACR).
机译:结合学术社会网络的社会交往特征,建立了基于社区划分的学者推荐模型。该模型是由GraphLab推出的大型图形计算系统的单一版本GraphChi开发的,用于在网络拓扑图上并行查找核心网络。在已建立的网络中,使用自适应标签传输来创建标签,然后根据节点上的标签数量获得社区划分的最终结果。计算是在社区内进行的,以提供专家推荐服务。在学术社交网络平台SCHOLAT上进行的数据集实验表明,模型不仅可以快速创建社区,而且可以通过“社区权重推荐(CWR)”,“社区随机推荐(CWR)”这三种个性化方法获得良好的推荐结果。 CRR)和推荐的熟人社区(ACR)。

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