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User Naming Conventions Mapping Learning for Social Network Alignment

机译:用户命名约定映射学习社交网络对齐

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The existing research on social network alignment using usernames is mainly based on the similarity between usernames calculated by different classifiers. However, if the number of available annotations and training time are limited and feature extraction is incomplete, the accuracy of social network alignment would have been be reduced. Based on the above, this paper proposes a BP neural network mapping for social network alignment (BSNA). The BP neural network is used to realize the mapping between two social network user name vectors, and the classification problem is transformed into a mapping problem between vectors. The experimental results on several social network data sets show that compared with the benchmark method, the social network alignment precision of the proposed model is improved by 4%, and the experiments with smaller training set ratio and less training time have higher precision and faster convergence than the benchmark method.
机译:使用用户名的社交网络对齐的现有研究主要基于不同分类器计算的用户名之间的相似性。 但是,如果可用注释和培训时间的数量是有限的,并且特征提取不完整,则会减少社交网络对齐的准确性。 基于上文,本文提出了一种用于社交网络对齐(BSNA)的BP神经网络映射。 BP神经网络用于实现两个社交网络用户名向量之间的映射,并且将分类问题转换为映射之间的映射问题。 若干社交网络数据集的实验结果表明,与基准方法相比,所提出的模型的社交网络对准精度得到4%,训练设定比率较小的实验和较少的训练时间具有更高的精度和更快的收敛性 比基准方法。

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