具有可调特征的精确图生成模型

Takahiro Yokoyama, Yoshiki Sato, Sho Tsugawa, Kohei Watabe
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引用次数: 0

摘要

图是一种非常常见和强大的数据结构,用于对通信和社交网络进行建模。生成具有任意特征的图的模型是网络重复仿真和拓扑变化预测的重要基础技术。尽管现有的图形生成模型对于提供类似于现实世界图形的图形很有用,但具有可调特征的图形生成模型在该领域的探索较少。在此之前,我们提出了GraphTune,这是一种图形生成模型,可以在保持给定图形数据集的大部分特征的同时,持续调整生成图形的特定图形特征。然而,GraphTune中图形特征的调优精度还不足以满足实际应用。在本文中,我们提出了一种提高GraphTune准确性的方法,通过增加一种新的机制来反馈生成图的图特征的误差,并通过交替和独立地训练它们。在一个真实的图数据集上的实验表明,与传统模型相比,生成的图中的特征得到了准确的调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Accurate Graph Generative Model with Tunable Features
A graph is a very common and powerful data structure used for modeling communication and social networks. Models that generate graphs with arbitrary features are important basic technologies in repeated simulations of networks and prediction of topology changes. Although existing generative models for graphs are useful for providing graphs similar to real-world graphs, graph generation models with tunable features have been less explored in the field. Previously, we have proposed GraphTune, a generative model for graphs that continuously tune specific graph features of generated graphs while maintaining most of the features of a given graph dataset. However, the tuning accuracy of graph features in GraphTune has not been sufficient for practical applications. In this paper, we propose a method to improve the accuracy of GraphTune by adding a new mechanism to feed back errors of graph features of generated graphs and by training them alternately and independently. Experiments on a real-world graph dataset showed that the features in the generated graphs are accurately tuned compared with conventional models.
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