A Visual Analytics Framework for Contrastive Network Analysis

Takanori Fujiwara, Jian Zhao, Francine Chen, K. Ma
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引用次数: 9

Abstract

A common network analysis task is comparison of two networks to identify unique characteristics in one network with respect to the other. For example, when comparing protein interaction networks derived from normal and cancer tissues, one essential task is to discover protein-protein interactions unique to cancer tissues. However, this task is challenging when the networks contain complex structural (and semantic) relations. To address this problem, we design ContraNA, a visual analytics framework leveraging both the power of machine learning for uncovering unique characteristics in networks and also the effectiveness of visualization for understanding such uniqueness. The basis of ContraNA is cNRL, which integrates two machine learning schemes, network representation learning (NRL) and contrastive learning (CL), to generate a low-dimensional embedding that reveals the uniqueness of one network when compared to another. ContraNA provides an interactive visualization interface to help analyze the uniqueness by relating embedding results and network structures as well as explaining the learned features by cNRL. We demonstrate the usefulness of ContraNA with two case studies using real-world datasets. We also evaluate ContraNA through a controlled user study with 12 participants on network comparison tasks. The results show that participants were able to both effectively identify unique characteristics from complex networks and interpret the results obtained from cNRL.
对比网络分析的可视化分析框架
一个常见的网络分析任务是比较两个网络,以确定一个网络相对于另一个网络的独特特征。例如,当比较来自正常组织和癌症组织的蛋白质相互作用网络时,一项基本任务是发现癌症组织特有的蛋白质-蛋白质相互作用。然而,当网络包含复杂的结构(和语义)关系时,这项任务是具有挑战性的。为了解决这个问题,我们设计了ContraNA,这是一个视觉分析框架,利用机器学习的力量来发现网络中的独特特征,同时也利用可视化的有效性来理解这种独特性。ContraNA的基础是cNRL,它集成了两种机器学习方案,网络表示学习(NRL)和对比学习(CL),以生成低维嵌入,揭示一个网络与另一个网络相比的独特性。ContraNA提供了一个交互式的可视化界面,通过关联嵌入结果和网络结构来帮助分析唯一性,并通过cNRL解释学习到的特征。我们用两个使用真实世界数据集的案例研究来证明ContraNA的有用性。我们还通过一个由12名参与者参与的网络比较任务的控制用户研究来评估ContraNA。结果表明,参与者能够有效地从复杂网络中识别出独特的特征,并解释cNRL获得的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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