静态和动态超图可视化研究综述

M. Fischer, A. Frings, D. Keim, Daniel Seebacher
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引用次数: 16

摘要

在过去的几年里,利用超图结构来模拟高级过程在许多领域得到了广泛的关注,从计算生物学中的蛋白质相互作用到使用机器学习的图像检索。与常规表示相比,超图模型可以提供更准确的底层过程表示,同时减少了链接的总数。然而,超图和基于超图的模型的交互可视化方法很少被探索或系统地分析。本文回顾了超图和超图模型可视化的研究现状,并对目前使用的技术进行了评估。我们对所提出的方法进行了概述和分类,重点关注性能、可伸缩性、交互支持、成功评估和表示不同底层数据结构的能力,包括最近对交互网络的时态表示的需求及其对基于图的方法的改进。最后,我们讨论了这些方法的优点和缺点,并对这一新兴研究领域未来面临的挑战提出了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Survey on Static and Dynamic Hypergraph Visualizations
Leveraging hypergraph structures to model advanced processes has gained much attention over the last few years in many areas, ranging from protein-interaction in computational biology to image retrieval using machine learning. Hypergraph models can provide a more accurate representation of the underlying processes while reducing the overall number of links compared to regular representations. However, interactive visualization methods for hypergraphs and hypergraph-based models have rarely been explored or systematically analyzed. This paper reviews the existing research landscape for hypergraph and hypergraph model visualizations and assesses the currently employed techniques. We provide an overview and a categorization of proposed approaches, focusing on performance, scalability, interaction support, successful evaluation, and the ability to represent different underlying data structures, including a recent demand for a temporal representation of interaction networks and their improvements beyond graph-based methods. Lastly, we discuss the strengths and weaknesses of the approaches and give an insight into the future challenges arising in this emerging research field.
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