Estimates the parameters of a standardized normal inverse Gaussian distribution.
snigFit(x, zeta = 1, rho = 0, scale = TRUE, doplot = TRUE, span = "auto", trace = TRUE, title = NULL, description = NULL, ...)zeta is positive,
skewness parameter rho is in the range (-1, 1).
TRUE. Should the time series
be scaled by its standard deviation to achieve a more stable
optimization?
span=seq(min, max,
times = n), where, min and max are the
left and right endpoints of the range, and n gives
the number of the intermediate points.
snigFit returns a list with the following
components:estimate.
Either estimate is an approximate local minimum of the
function or steptol is too small;
4: iteration limit exceeded;
5: maximum step size stepmax exceeded five consecutive times.
Either the function is unbounded below, becomes asymptotic to a
finite value from above in some direction or stepmax
is too small.
## snigFit -
# Simulate Random Variates:
set.seed(1953)
s = rsnig(n = 2000, zeta = 0.7, rho = 0.5)
## snigFit -
# Fit Parameters:
snigFit(s, zeta = 1, rho = 0, doplot = TRUE)
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