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T =

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Special Cases I'd like to be able to deal with ... Where CH(f)(F1,...,Fn) is a copula, either: Elliptically contoured (e.g., Gaussian) ... – PowerPoint PPT presentation

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Title: T =


1
Output Y(s)
??
T
Input (s)
s3
s1
s2
sP
n Number of Input Points (3) T Number of
Outputs at each input, i.e., Replications (5)
2
Special Cases Id like to be able to deal with
  • When T 1 (i.e., 1 Replication) and assuming
    normality it should reduce to a GP.
  • When n 1 (i.e., 1 input point) it should reduce
    to CDF estimation as with a univariate DP prior.

3
Gelfand, Kottas, and MacEachernJASA vol. 100,
No. 471 (2005)
Output Z(x)
Each color is a different replication
Input (x)
x3
x1
x2
4
Gelfand, Kottas, and MacEachernJASA vol. 100,
No. 471 (2005)
5
How to break the association of outputs across
inputs?
  • Could add a (uniform?) prior on Replication
    membership.
  • This could in principle be dealt with by
    inserting a Metropolis step within the Gibbs
    sampler .
  • Im unsure whether this Gelfand et al. technique
    is helpful for estimating the CDF when there is
    only one input point.

6
Another Idea
  • Where CH(f)(F1,,Fn) is a copula, either
  • Elliptically contoured (e.g., Gaussian)
  • Fairlie-Gumbel-Morgenstern

7
Copulae
  • Gaussian
  • F-G-M
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