Beta-geometric Distribution Family Function
Maximum likelihood estimation for the beta-geometric distribution.
betageometric(lprob = "logitlink", lshape = "loglink", iprob = NULL, ishape = 0.1, moreSummation = c(2, 100), tolerance = 1.0e-10, zero = NULL)
lprob, lshape |
Parameter link functions applied to the
parameters prob and phi
(called |
iprob, ishape |
Numeric.
Initial values for the two parameters.
A |
moreSummation |
Integer, of length 2.
When computing the expected information matrix a series summation from
0 to |
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}. |
A random variable Y has a 2-parameter beta-geometric distribution
if P(Y=y) = prob * (1-prob)^y
for y=0,1,2,... where
prob are generated from a standard beta distribution with
shape parameters shape1
and shape2
.
The parameterization here is to focus on the parameters
prob 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-prob) / (prob-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
.
An object of class "vglmff"
(see vglmff-class
).
The object is used by modelling functions such as vglm
,
and vgam
.
The first iteration may be very slow;
if practical, it is best for the weights
argument of
vglm
etc. to be used rather than inputting a very
long vector as the response, i.e., vglm(y ~ 1, ..., weights = wts)
is to be preferred over vglm(rep(y, wts) ~ 1, ...)
.
If convergence problems occur try inputting some values of argument
ishape
.
If an intercept-only model is fitted then the misc
slot of the
fitted object has list components shape1
and shape2
.
T. W. Yee
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.
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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