VGAM (version 1.0-4)

betageometric: Beta-geometric Distribution Family Function

Description

Maximum likelihood estimation for the beta-geometric distribution.

Usage

betageometric(lprob = "logit", lshape = "loge",
              iprob = NULL,    ishape = 0.1,
              moreSummation = c(2, 100), tolerance = 1.0e-10, zero = NULL)

Arguments

lprob, lshape

Parameter link functions applied to the parameters \(p\) and \(\phi\) (called prob and shape below). The former lies in the unit interval and the latter is positive. See Links for more choices.

iprob, ishape

Numeric. Initial values for the two parameters. A NULL means a value is computed internally.

moreSummation

Integer, of length 2. When computing the expected information matrix a series summation from 0 to moreSummation[1]*max(y)+moreSummation[2] is made, in which the upper limit is an approximation to infinity. Here, y is the response.

tolerance

Positive numeric. When all terms are less than this then the series is deemed to have converged.

zero

An integer-valued vector specifying which linear/additive predictors are modelled as intercepts only. If used, the value must be from the set {1,2}.

Value

An object of class "vglmff" (see vglmff-class). The object is used by modelling functions such as vglm, and vgam.

Details

A random variable \(Y\) has a 2-parameter beta-geometric distribution if \(P(Y=y) = p (1-p)^y\) for \(y=0,1,2,\ldots\) where \(p\) are generated from a standard beta distribution with shape parameters shape1 and shape2. The parameterization here is to focus on the parameters \(p\) and \(\phi = 1/(shape1+shape2)\), where \(\phi\) is shape. The default link functions for these ensure that the appropriate range of the parameters is maintained. The mean of \(Y\) is \(E(Y) = shape2 / (shape1-1) = (1-p) / (p-\phi)\) if shape1 > 1, and if so, then this is returned as the fitted values.

The geometric distribution is a special case of the beta-geometric distribution with \(\phi=0\) (see geometric). However, fitting data from a geometric distribution may result in numerical problems because the estimate of \(\log(\phi)\) will 'converge' to -Inf.

References

Paul, S. R. (2005) Testing goodness of fit of the geometric distribution: an application to human fecundability data. Journal of Modern Applied Statistical Methods, 4, 425--433.

See Also

geometric, betaff, rbetageom.

Examples

Run this code
# NOT RUN {
bdata <- data.frame(y = 0:11, wts = c(227,123,72,42,21,31,11,14,6,4,7,28))
fitb <- vglm(y ~ 1, betageometric, data = bdata, weight = wts, trace = TRUE)
fitg <- vglm(y ~ 1,     geometric, data = bdata, weight = wts, trace = TRUE)
coef(fitb, matrix = TRUE)
Coef(fitb)
sqrt(diag(vcov(fitb, untransform = TRUE)))
fitb@misc$shape1
fitb@misc$shape2
# Very strong evidence of a beta-geometric:
pchisq(2 * (logLik(fitb) - logLik(fitg)), df = 1, lower.tail = FALSE)
# }

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