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A Dynamic Community Detection Method for Complex Networks Based on Deep Self-Coding Network

机译:一种基于深度自编码网络的复杂网络动态社区检测方法

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摘要

Aiming at the problem of community detection in complex dynamic networks, a dynamic community detection method based on graph convolution neural network is proposed. An encoding-decoding mechanism is designed to reconstruct the feature information of each node in the graph. A stack of multiple graph convolutional layers is considered as an encoder that encodes the node feature information into the potential vector space, while the decoder employs a simple two-layer perceptron to reconstruct the initial node features from the encoded vector information. The encoding-decoding mechanism achieves a re-evaluation of the initial node features. Subsequently, an additional local feature reconstruction loss is added after the decoder to aid the goal of graph classification. Further, stochastic gradient descent is applied to solve the problem in the loss function. Finally, the proposed model is experimentally validated based on the Karate Club and Football datasets. The experimental results show that the proposed model improves the NMI metric by an average of 7.65 and effectively mitigates the node oversmoothing problem. The proposed model is proved to have good detection accuracy.
机译:针对复杂动态网络中的社区检测问题,提出一种基于图卷积神经网络的动态社区检测方法。设计了一种编解码机制,用于重构图中每个节点的特征信息。将多个图卷积层的堆栈视为编码器,将节点特征信息编码到潜在的向量空间中,而解码器则采用简单的两层感知器从编码的向量信息中重构初始节点特征。编解码机制实现了对初始节点特征的重新评估。随后,在解码器后增加一个额外的局部特征重构损失,以帮助实现图分类的目标。此外,还应用随机梯度下降法解决了损失函数中的问题。最后,基于空手道俱乐部和足球数据集对所提模型进行了实验验证。实验结果表明,所提模型使NMI度量平均提高了7.65%,有效缓解了节点过平滑问题。结果表明,该模型具有较好的检测精度。

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