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How to use the package "generalized hyperbolic distribution" in order to fit the paramters in the NIG distribution to a data set?

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What is the "NIG" distribution? – Aniko May 6 '11 at 20:56
The ghyp package has functions fit.NIGuv (for univariate data) and a fit.NIGmv (for multivariate) data, and it's all very clearly described in the doc for the package. Did you look at it or try it out? – Prasad Chalasani May 6 '11 at 20:59
Hi! Thank you for your answer. But when I try to use this function I get the message that it can't find this function. which packages do I have to download to be able to use this function? And is there something special I should do when I have downloaded a package in order to make it work? – Claire May 7 '11 at 10:17
@Aniko: NIG is Normal Inverse Gaussian – Henry Jun 3 '11 at 7:15

Developing @Prasad Chalasani's comment, you need to install the ghyp package. When I did, the packages gtools, gdata, numDeriv and gplots were also installed automatically. However, I then got the same error as you Error: could not find function "fit.NIGuv", which I resolved by installing the bitops package manually.

The documentation gives an example of the following code using fit.NIGuv()

data(smi.stocks) <- fit.NIGuv(smi.stocks[,"SMI"], = c( = FALSE),
            = 1, control = list(abs.tol = 1e-8))

where the output includes

Asymmetric Normal Inverse Gaussian Distribution:

Parameters:            mu         sigma         gamma 
 1.0000000000  0.0008370731  0.0112098776 -0.0007205143 


and I think this is the kind of thing you are looking for.

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