GRAPHULY: GRAPH U-Nets-Based Multi-Level Graph LaYout

2022年12月1日·
闫凯
闫凯
,
Tiejun zhao
,
Muyun yang
· 0 分钟阅读时长
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The proposed Graph UNet model for graph layout generation
摘要
Graph layout is a critical component in graph visualization. This paper proposes GRAPHULY, a graph u-nets-based neural network, for end-to-end graph layout generation. GRAPHULY learns the multi-level graph layout process and can generate graph layouts without iterative calculation. We also propose to use Laplacian positional encoding and a multi-level loss fusion strategy to improve the layout learning. We evaluate the model with a random dataset and a graph drawing dataset and showcase the effectiveness and efficiency of GRAPHULY in graph visualization.
类型
出版物
IEICE Transactions on Information and Systems
publication
闫凯
Authors
讲师|特聘青年研究员|硕士生导师
佛山大学特聘青年研究员、讲师及硕士生导师,佛山市电子政务工程技术研究中心副主任。哈工大博士,曾赴微软亚研联合培养,师从赵铁军与洪小文教授。目前聚焦具身智能(家政机器人)、多智能体建模及数字人文交叉研究。核心参与国家基金及地方政务系统项目,致力于在真实场景中解决实际问题,推动产学研落地。
Authors