Yang, HaiyanBallester-Ripoll, RafaelPajarola, RenatoBorgo, Rita and Marai, G. Elisabeta and Landesberger, Tatiana von2021-06-122021-06-1220211467-8659https://doi.org/10.1111/cgf.14306https://diglib.eg.org:443/handle/10.1111/cgf14306Sobol's method is one of the most powerful and widely used frameworks for global sensitivity analysis, and it maps every possible combination of input variables to an associated Sobol index. However, these indices are often challenging to analyze in depth, due in part to the lack of suitable, flexible enough, and fast-to-query data access structures as well as visualization techniques. We propose a visualization tool that leverages tensor decomposition, a compressed data format that can quickly and approximately answer sophisticated queries over exponential-sized sets of Sobol indices. This way, we are able to capture the complete global sensitivity information of high-dimensional scalar models. Our application is based on a three-stage visualization, to which variables to be analyzed can be added or removed interactively. It includes a novel hourglass-like diagram presenting the relative importance for any single variable or combination of input variables with respect to any composition of the rest of the input variables. We showcase our visualization with a range of example models, whereby we demonstrate the high expressive power and analytical capability made possible with the proposed method.Sobol indicestensorbased sensitivity computationexplorative sensitivity analysisinteractive sensitivity visualization CCS ConceptsHuman centered computingVisualizationTheory of computationDesign and analysis of algorithmsSenVis: Interactive Tensor-based Sensitivity Visualization10.1111/cgf.14306275-286