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arxiv: 0908.3400 · v1 · submitted 2009-08-24 · ⚛️ physics.data-an · cond-mat.stat-mech· math-ph· math.MP· nlin.CD· physics.ao-ph· physics.flu-dyn

Decomposing data sets into skewness modes

classification ⚛️ physics.data-an cond-mat.stat-mechmath-phmath.MPnlin.CDphysics.ao-phphysics.flu-dyn
keywords modesskewnessatmosphericdataequationsnonlinearapplycase
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We derive the nonlinear equations satisfied by the coefficients of linear combinations that maximize their skewness when their variance is constrained to take a specific value. In order to numerically solve these nonlinear equations we develop a gradient-type flow that preserves the constraint. In combination with the Karhunen-Lo\`eve decomposition this leads to a set of orthogonal modes with maximal skewness. For illustration purposes we apply these techniques to atmospheric data; in this case the maximal-skewness modes correspond to strongly localized atmospheric flows. We show how these ideas can be extended, for example to maximal-flatness modes.

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