基于图嵌入的可靠网络属性分类器

Hao Liao, Qi-xin Liu, Alexandre Vidmer, Mingyang Zhou, Rui Mao
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引用次数: 0

摘要

近二十年来,各学科对信息网络分析进行了深入研究。小世界性质和无标度性质是网络科学研究的主流。不同类型图的比较和分类是非常重要的。然而,如何利用深度学习技术设计出鲁棒且准确的网络属性分类仍然缺乏足够的重视,这在各种应用场景中都是一个至关重要的任务。本文提出了基于图嵌入(RNC)的可靠网络属性分类器,对网络属性(无标度或小世界属性)进行分类。为了处理非欧几里德数据,我们将每个网络嵌入到图像中,并使用降维、栅格化和卷积神经网络来完成分类问题。该方法不仅可以在人工网络中有效地完成分类任务,也可以在真实网络中有效地完成分类任务。此外,RNC在真实网络的鲁棒性方面也取得了较大的胜利,显示了RNC对网络不完全结构的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RNC: Reliable Network Property Classifier Based on Graph Embedding
In the past two decades, analyzing the information network has been intensively studied from various disciplines. Small world property and scale-free property prevail in network science research. The comparison and classification of different kinds of graphs are extremely important. However, how to design a robust and accurate classification with deep learning techniques for network property still lack enough attention, which is a vital task in various application scenarios. In this paper, we proposed the reliable network property classifier based on graph embedding(RNC) to classify the network property (scale free or small world property). In order to process non-euclidean data, we embedded each network into an image and use dimensional reduction, rasterization, and convolutional neural networks to complete the classification problem. The method can effectively accomplish classification tasks in not only artificial networks but also real networks. Besides, RNC wins greatly in terms of robustness on real networks, showing the robustness of RNC against the incomplete structure of the network.
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