论文标题
SmartGD:用于不同美学目标的基于GAN的图形绘图框架
SmartGD: A GAN-Based Graph Drawing Framework for Diverse Aesthetic Goals
论文作者
论文摘要
尽管已经在图形图上进行了大量研究,但许多现有方法仅着重于优化图形布局的单个美学方面,这可能会导致次优结果。有一些现有的方法试图开发一种灵活的解决方案,以优化通过不同美学标准衡量的不同美学方面。此外,由于深度学习技术的重大进展,最近提出了几种基于深度学习的布局方法。这些方法证明了图形绘图的深度学习方法的优势。但是,这些现有方法都不能直接应用于没有特殊住宿的情况下优化非差异标准。在这项工作中,我们提出了一个基于新颖的生成对抗网络(GAN)的深度学习框架,称为SmartGD,该框架可以优化不同的定量美学目标,无论其不同性如何。为了证明SMARTGD的有效性和效率,我们进行了实验,以最大程度地减少压力,最小化边缘交叉,最大化交叉角度,最大化基于形状的指标以及多种美学的组合。与几种流行的图形算法相比,实验结果表明,SmartGD在定量和定性上都能达到良好的性能。
While a multitude of studies have been conducted on graph drawing, many existing methods only focus on optimizing a single aesthetic aspect of graph layouts, which can lead to sub-optimal results. There are a few existing methods that have attempted to develop a flexible solution for optimizing different aesthetic aspects measured by different aesthetic criteria. Furthermore, thanks to the significant advance in deep learning techniques, several deep learning-based layout methods were proposed recently. These methods have demonstrated the advantages of deep learning approaches for graph drawing. However, none of these existing methods can be directly applied to optimizing non-differentiable criteria without special accommodation. In this work, we propose a novel Generative Adversarial Network (GAN) based deep learning framework for graph drawing, called SmartGD, which can optimize different quantitative aesthetic goals, regardless of their differentiability. To demonstrate the effectiveness and efficiency of SmartGD, we conducted experiments on minimizing stress, minimizing edge crossing, maximizing crossing angle, maximizing shape-based metrics, and a combination of multiple aesthetics. Compared with several popular graph drawing algorithms, the experimental results show that SmartGD achieves good performance both quantitatively and qualitatively.