Multivariate networks are commonly found in real-world data-driven applications. Uncovering and understanding the relations of interest in multivariate networks is not a trivial task. This paper presents a visual analytics workflow for studying multivariate networks to extract associations between different structural and semantic characteristics of the networks (e.g., what are the combinations of attributes largely relating to the density of a social network?). The workflow consists of a neural-network-based learning phase to classify the data based on the chosen input and output attributes, a dimensionality reduction and optimization phase to produce a simplified set of results for examination, and finally an interpreting phase conducted by the user through an interactive visualization interface. A key part of our design is a composite variable construction step that remodels nonlinear features obtained by neural networks into linear features that are intuitive to interpret. We demonstrate the capabilities of this workflow with multiple case studies on networks derived from social media usage and also evaluate the workflow through an expert interview.
翻译:多元网络在实际数据驱动应用中很常见。解析和理解多元网络中的感兴趣关系并不是一项简单任务。本文提供了一种可视化分析工作流,用于研究多元网络,以提取网络不同结构和语义特征之间的关联性(例如,什么样的属性组合与社交网络密度最相关?)。该工作流程由基于神经网络的学习阶段、降维和优化阶段以及用户通过交互式可视化界面进行解读的解释阶段组成。我们设计的关键部分是组合变量构建步骤,它将神经网络获得的非线性特征重构为线性特征,使其易于解释。我们通过基于社交媒体使用的网络进行了多个案例研究,并通过专家采访评估了工作流程的能力。