Concentration without measure

01/26/2018
by   Cheng-shi Liu, et al.
0

Although there doesn't exist the Lebesgue measure in the ball M of C[0,1] with p-norm, the average values (expectation) EY and variance DY of some functionals Y on M can still be defined through the procedure of limitation from finite dimension to infinite dimension. In particular, the probability densities of coordinates of points in the ball M exist and are derived out even though the density of points in M doesn't exist. These densities include high order normal distribution, high order exponent distribution. This also can be considered as the geometrical origins of these probability distributions. Further, the exact values of a kind of infinite-dimensional functional integrals are obtained, and specially the variance DY is proven to be zero, and then the nonlinear exchange formulas of average values of analytic functionals are also given. Instead of measure, the variance is used to measure the deviation of functional and its average value. DY=0 means that a functional takes its average on a ball with probability 1 by using the language of probability theory, and this is just the concentration of measure phenomenon without measure.

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