Description Usage Arguments Details Value See Also Examples
Maximum-likelihood fitting for the order statistic model, including generalized linear modelling of each parameter.
1 2 3 4 |
xdat |
A numeric matrix of data to be fitted. Each row
should be a vector of decreasing order, containing the
largest order statistics for each year (or time period).
The first column therefore contains annual (or period)
maxima.
Only the first |
r |
The largest |
ydat |
A matrix of covariates for generalized linear modelling
of the parameters (or |
mul, sigl, shl |
Numeric vectors of integers, giving the columns
of |
mulink, siglink, shlink |
Inverse link functions for generalized linear modelling of the location, scale and shape parameters repectively. |
muinit, siginit, shinit |
numeric of length equal to total number of parameters used to model the location, scale or shape parameter(s), resp. See Details section for default (NULL) initial values. |
show |
Logical; if |
method |
The optimization method (see |
maxit |
The maximum number of iterations. |
... |
Other control parameters for the optimization. These
are passed to components of the |
For non-stationary fitting it is recommended that the covariates
within the generalized linear models are (at least approximately)
centered and scaled (i.e.\ the columns of ydat
should be
approximately centered and scaled).
Let m=mean(xdat) and s=sqrt(6*var(xdat))/pi. Then, initial values assigend when 'muinit' is NULL are m - 0.57722 * s (stationary case). When 'siginit' is NULL, the initial value is taken to be s, and when 'shinit' is NULL, the initial value is taken to be 0.1. When covariates are introduced (non-stationary case), these same initial values are used by default for the constant term, and zeros for all other terms. For example, if a GEV( mu(t)=mu0+mu1*t, sigma, xi) is being fitted, then the initial value for mu0 is m - 0.57722 * s, and 0 for mu1.
A list containing the following components. A subset of these
components are printed after the fit. If show
is
TRUE
, then assuming that successful convergence is
indicated, the components nllh
, mle
and se
are always printed.
trans |
An logical indicator for a non-stationary fit. |
model |
A list with components |
link |
A character vector giving inverse link functions. |
conv |
The convergence code, taken from the list returned by
|
nllh |
The negative logarithm of the likelihood evaluated at the maximum likelihood estimates. |
data |
The data that has been fitted. For non-stationary models, the data is standardized. |
mle |
A vector containing the maximum likelihood estimates. |
cov |
The covariance matrix. |
se |
A vector containing the standard errors. |
vals |
A matrix with three columns containing the maximum likelihood estimates of the location, scale and shape parameters at each data point. |
r |
The number of order statistics used. |
1 2 | ## Not run: data(venice)
## Not run: rlarg.fit(venice[,-1])
|
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