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VGAM (version 0.7-5)

vglm.control: Control function for vglm

Description

Algorithmic constants and parameters for running vglm are set using this function.

Usage

vglm.control(backchat = if (is.R()) FALSE else TRUE,
             checkwz=TRUE, criterion = names(.min.criterion.VGAM),
             epsilon = 1e-07, half.stepsizing = TRUE,
             maxit = 30, stepsize = 1, save.weight = FALSE,
             trace = FALSE, wzepsilon = .Machine$double.eps^0.75, 
             xij = NULL, ...)

Arguments

backchat
logical indicating if a backchat is to be used (not applicable in R).
checkwz
logical indicating whether the diagonal elements of the working weight matrices should be checked whether they are sufficiently positive, i.e., greater than wzepsilon. If not, any values less than wzepsilon are replaced wit
criterion
character variable describing what criterion is to be used to test for convergence. The possibilities are listed in .min.criterion.VGAM, but most family functions only implement a few of these.
epsilon
positive convergence tolerance epsilon. Roughly speaking, the Newton-Raphson/Fisher-scoring iterations are assumed to have converged when two successive criterion values are within epsilon of each other.
half.stepsizing
logical indicating if half-stepsizing is allowed. For example, in maximizing a log-likelihood, if the next iteration has a log-likelihood that is less than the current value of the log-likelihood, then a half step will be taken. If the log-likelih
maxit
maximum number of Newton-Raphson/Fisher-scoring iterations allowed.
stepsize
usual step size to be taken between each Newton-Raphson/Fisher-scoring iteration. It should be a value between 0 and 1, where a value of unity corresponds to an ordinary step. A value of 0.5 means half-steps are taken. Setting a value near zer
save.weight
logical indicating whether the weights slot of a "vglm" object will be saved on the object. If not, it will be reconstructed when needed, e.g., summary. Some family functions have save.weight=TRUE
trace
logical indicating if output should be produced for each iteration.
wzepsilon
Small positive number used to test whether the diagonals of the working weight matrices are sufficiently positive.
xij
formula giving terms making up a covariate-dependent term (a variable that takes on different values for each linear/additive predictor. For example, the ocular pressure of each eye). There should be $M$ unique terms; use
...
other parameters that may be picked up from control functions that are specific to the VGAM family function.

Value

  • A list with components matching the input names. A little error checking is done, but not much. The list is assigned to the control slot of vglm objects.

Details

Most of the control parameters are used within vglm.fit and you will have to look at that to understand the full details.

Setting save.weight=FALSE is useful for some models because the weights slot of the object is the largest and so less memory is used to store the object. However, for some VGAM family function, it is necessary to set save.weight=TRUE because the weights slot cannot be reconstructed later.

References

Yee, T. W. and Hastie, T. J. (2003) Reduced-rank vector generalized linear models. Statistical Modelling, 3, 15--41.

See Also

vglm, fill.

Examples

Run this code
# Example 1.
data(pneumo)
pneumo = transform(pneumo, let=log(exposure.time))
vglm(cbind(normal,mild,severe) ~ let, multinomial, pneumo,
     crit="coef", step=0.5, trace=TRUE, eps=1e-8, maxit=40)


# Example 2. The use of the xij argument
set.seed(111)
n = 1000
ymat = rdiric(n, shape=c(4,7,3,1))
mydat = data.frame(x1=runif(n), x2=runif(n), x3=runif(n), x4=runif(n),
                   z1=runif(n), z2=runif(n), z3=runif(n), z4=runif(n))
mydat = round(mydat, dig=2)
fit = vglm(ymat ~ x1 + x2 + x3 + x4 + z1 + z2 + z3 + z4,
           fam = dirichlet, data=mydat, crit="c",
           xij = list(z ~ z1 + z2 + z3 + z4,
                      x ~ x1 + x2 + x3 + x4))
model.matrix(fit, type="lm")[1:7,]   # LM model matrix
model.matrix(fit, type="vlm")[1:7,]  # Big VLM model matrix
coef(fit)
coef(fit, matrix=TRUE)
coef(fit, matrix=TRUE, compress=FALSE)
max(abs(predict(fit)-predict(fit, new=mydat))) # Predicts correctly
summary(fit)

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