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It is a N by N matrix that relates the variation of each variable to the previous variations of itself and the other N-1 variables. For instance; in the 2by2 variational matrix [Fxx, Fyx; Fxy, Fyy], Fyx gives the component(if any) of Y variation that comes from the previous X variation.

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