Calculates an approximation to the expected value of any function of a normally-distributed random variable, using Gauss-Hermite quadrature.
gauss.hermite(f, mu = 0, sd = 1, ..., order = 5)The function whose moment should be approximated.
Mean of the normal distribution.
Standard deviation of the normal distribution.
Additional arguments passed to f.
Number of quadrature points in the Gauss-Hermite quadrature approximation. A small positive integer.
Numeric value, vector or matrix.
This algorithm calculates the approximate expected value of
  f(Z) when Z is a normally-distributed random
  variable with mean mu and standard deviation sd.
  The expected value is an integral with respect to the
  Gaussian density; this integral is approximated
  using Gauss-Hermite quadrature.
The argument f should be a function in the R language
  whose first argument is the variable Z. Additional arguments
  may be passed through …. The value returned by f
  may be a single numeric value, a vector, or a matrix. The values
  returned by f for different values of Z must have
  compatible dimensions.
The result is a weighted average of several values of f.
# NOT RUN {
  gauss.hermite(function(x) x^2, 3, 1)
# }
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