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arxiv: 1809.03618 · v1 · pith:SXHU5UGRnew · submitted 2018-09-11 · 💻 cs.GR · cs.LG· cs.MM· cs.NA· math.NA

Visualization of High-dimensional Scalar Functions Using Principal Parameterizations

classification 💻 cs.GR cs.LGcs.MMcs.NAmath.NA
keywords fieldsmethodprincipalanalysisfunctionshigh-dimensionalinputparameters
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Insightful visualization of multidimensional scalar fields, in particular parameter spaces, is key to many fields in computational science and engineering. We propose a principal component-based approach to visualize such fields that accurately reflects their sensitivity to input parameters. The method performs dimensionality reduction on the vast $L^2$ Hilbert space formed by all possible partial functions (i.e., those defined by fixing one or more input parameters to specific values), which are projected to low-dimensional parameterized manifolds such as 3D curves, surfaces, and ensembles thereof. Our mapping provides a direct geometrical and visual interpretation in terms of Sobol's celebrated method for variance-based sensitivity analysis. We furthermore contribute a practical realization of the proposed method by means of tensor decomposition, which enables accurate yet interactive integration and multilinear principal component analysis of high-dimensional models.

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