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Evaluating the Community Structures from Network Images Using Neural Networks

机译:使用神经网络从网络图像评估社区结构

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Communities or clusters in a network unveil important structures of a physical or social system. Suppose a Google image search for "complex network" returns thousands of network images. Can we infer the community structures in the original networks just from these images? Traditional community detection algorithms will fail in this case because they do not work with images. We developed an approach where convolutional neural networks (CNNs) are trained to reveal community information from images of complex networks. We trained three CNNs with images of simulated networks having ground truth communities. The training process uses state-of-the-art community detection, graph drawing, and deep learning training algorithms. The trained networks are then used to predict the number of communities and the modularity score (a measure of community structure of networks) for real-world networks. We formulated these two tasks as a classification and a regression problem and used appropriate loss functions for them. The CNN models can attain test accuracy of 81% and 33.3% for simulated and real networks, respectively. This result is statistically significant as can be seen by Spearman's rank correlation of 0.77 with a p-value of 6.2 × 10~(-13) for real-world networks.
机译:网络中的社区或集群揭示了物理或社会系统的重要结构。假设Google图片搜索“复杂网络”返回了数千张网络图片。我们可以仅从这些图像中推断出原始网络中的社区结构吗?在这种情况下,传统的社区检测算法将失败,因为它们不适用于图像。我们开发了一种方法,其中对卷积神经网络(CNN)进行了训练,以揭示复杂网络图像中的社区信息。我们使用具有地面真实性社区的模拟网络图像训练了三个CNN。培训过程使用最新的社区检测,图形绘制和深度学习培训算法。然后,将训练有素的网络用于预测实际网络的社区数量和模块化评分(网络社区结构的度量)。我们将这两个任务表述为分类和回归问题,并为其使用了适当的损失函数。 CNN模型在模拟和真实网络中的测试准确率分别为81%和33.3%。从实际网络中Spearman的等级相关系数0.77和p值6.2×10〜(-13)可以看出,该结果具有统计学意义。

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