-dimensional Fourier Transform
Ff− = (Ff)−, (Ff)− = F−1f In connection with these formulas, I have to point out that changing variables, one of our prized techniques in one dimension, can be more complicated for multiple integrals. We’ll approach this on a need to know basis.
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