How can I calculate the empircal CDF from an empirical PDF when dimensions are greater than 2?

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I would like to calculate the empirical cumulative distribution of a data set with more than 2 dimensions. The only examples I have been able to find are for bivariate data (using hist3 and cumsum). Below is an example 3 dimensional PDF. I would like a robust solution that can accommodate any number of dimensions, if possible. Any help would be very much appreciated. Thank you.
sPDF(1,1,1) = 1;
sPDF(2,1,1) = 2;
sPDF(1,2,1) = 3;
sPDF(2,2,1) = 4;
sPDF(1,1,2) = 5;
sPDF(2,1,2) = 6;
sPDF(1,2,2) = 7;
sPDF(2,2,2) = 8;

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Star Strider
Star Strider el 28 de Jul. de 2014
See if the mvncdf function and its friends do what you want.
  10 comentarios
Peter Mills
Peter Mills el 23 de Feb. de 2018
What if I want to calculate the empirical cdf from an empirical pdf. Basically the question above but with data containing NaN's. I've tried cumsum but I get NaN's for every value after the first NaN value
Greg
Greg el 23 de Feb. de 2018
You could try interpolating the NaN values first. Something like the following: inpaint This one may also work: inpainting Or you could try fitting a neural network to the data and predict those NaN values.

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