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Large-scale dynamic social data representation for structure feature learning

机译:结构特征学习的大规模动态社交数据表示

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摘要

The problems caused by network dimension disasters and computational complexity have become an important issue to be solved in the field of social network research. The existing methods for network feature learning are mostly based on static and small-scale assumptions, and there is no modified learning for the unique attributes of social networks. Therefore, existing learning methods cannot adapt to the dynamic and large-scale of current social networks. Even super large scale and other features. This paper mainly studies the feature representation learning of large-scale dynamic social network structure. In this paper, the positive and negative damping sampling of network nodes in different classes is carried out, and the dynamic feature learning method for newly added nodes is constructed, which makes the model feasible for the extraction of structural features of large-scale social networks in the process of dynamic change. The obtained node feature representation has better dynamic robustness. By selecting the real datasets of three large-scale dynamic social networks and the experiments of dynamic link prediction in social networks, it is found that DNPS has achieved a large performance improvement over the benchmark model in terms of prediction accuracy and time efficiency. When the a value is around 0.7, the model effect is optimal.
机译:网络维度灾害和计算复杂性引起的问题已成为在社交网络研究领域解决的重要问题。现有的网络特征学习方法主要基于静态和小规模的假设,并且没有修改社交网络的独特属性的修改学习。因此,现有的学习方法不能适应动态和大规模的当前社交网络。甚至超大规模和其他特征。本文主要研究大规模动态社交网络结构的特征表示学习。在本文中,执行了不同类别中的网络节点的正负阻尼采样,构建了新添加节点的动态特征学习方法,这使得模型可用于提取大规模社交网络的结构特征在动态变化的过程中。所获得的节点特征表示具有更好的动态鲁棒性。通过选择三种大规模动态社交网络的实际数据集和社交网络中动态链路预测的实验,发现DNP在预测精度和时间效率方面已经实现了基准模型的大量性能改进。当值约为0.7时,模型效果是最佳的。

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