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.
翻译:过去几年来,在许多领域,从计算生物学中的蛋白质相互作用到利用机器学习进行图像检索,利用高光学结构模拟先进进程在许多领域都引起了人们的极大关注,这些领域包括计算生物学中的蛋白质相互作用,以及利用机器学习进行图像检索;高光学模型可以更准确地反映基本过程,同时减少链接的总数,而与正常陈述相比,这种模型的连接总数也有所减少;然而,对高光学和高光学模型的互动可视化方法很少进行探讨或系统分析;本文件审查了高光学和高光学模型的现有研究景观,并评估了目前采用的技术;我们概述了和分类了拟议方法,重点是性能、可扩缩性、互动支持、成功评估,以及代表不同基本数据结构的能力,包括最近对互动网络的时间代表性的需求及其超越图形方法的改进;最后,我们讨论了这些方法的长处和短处,并深入了解了这一新兴研究领域未来的挑战。