
Fits a Poisson regression where the response is ordinal (the Poisson counts are grouped between known cutpoints).
ordpoisson(cutpoints, countdata = FALSE, NOS = NULL,
Levels = NULL, init.mu = NULL, parallel = FALSE,
zero = NULL, link = "loglink")
Numeric. The cutpoints, Inf
values may be included.
See below for further details.
Logical. Is the response (LHS of formula) in count-data format?
If not then the response is a matrix or vector with values 1
,
2
, …, L
, say, where L
is the number of
levels. Such input can be generated with cut
with argument labels = FALSE
. If countdata = TRUE
then
the response is expected to be in the same format as depvar(fit)
where fit
is a fitted model with ordpoisson
as the
VGAM family function. That is, the response is matrix of counts
with L
columns (if NOS = 1
).
Integer. The number of species, or more generally, the number of
response random variates.
This argument must be specified when countdata = TRUE
.
Usually NOS = 1
.
Integer vector, recycled to length NOS
if necessary.
The number of levels for each response random variate.
This argument should agree with cutpoints
.
This argument must be specified when countdata = TRUE
.
Numeric. Initial values for the means of the Poisson regressions.
Recycled to length NOS
if necessary.
Use this argument if the default initial values fail (the
default is to compute an initial value internally).
See poissonff
.
An object of class "vglmff"
(see vglmff-class
).
The object is used by modelling functions such as vglm
and vgam
.
The input requires care as little to no checking is done.
If fit
is the fitted object, have a look at fit@extra
and
depvar(fit)
to check.
This VGAM family function uses maximum likelihood estimation
(Fisher scoring)
to fit a Poisson regression to each column of a matrix response.
The data, however, is ordinal, and is obtained from known integer
cutpoints.
Here,
If NOS=1
then
the argument cutpoints
is a vector Inf
) is optional. If NOS>1
then
the vector should have NOS-1
Inf
values separating
the cutpoints. For example, if there are NOS=3
responses, then
something like
ordpoisson(cut = c(0, 5, 10, Inf, 20, 30, Inf, 0, 10, 40, Inf))
is valid.
Yee, T. W. (2012) Ordinal ordination with normalizing link functions for count data, (in preparation).
# NOT RUN {
set.seed(123) # Example 1
x2 <- runif(n <- 1000); x3 <- runif(n)
mymu <- exp(3 - 1 * x2 + 2 * x3)
y1 <- rpois(n, lambda = mymu)
cutpts <- c(-Inf, 20, 30, Inf)
fcutpts <- cutpts[is.finite(cutpts)] # finite cutpoints
ystar <- cut(y1, breaks = cutpts, labels = FALSE)
# }
# NOT RUN {
plot(x2, x3, col = ystar, pch = as.character(ystar))
# }
# NOT RUN {
table(ystar) / sum(table(ystar))
fit <- vglm(ystar ~ x2 + x3, fam = ordpoisson(cutpoi = fcutpts))
head(depvar(fit)) # This can be input if countdata = TRUE
head(fitted(fit))
head(predict(fit))
coef(fit, matrix = TRUE)
fit@extra
# Example 2: multivariate and there are no obsns between some cutpoints
cutpts2 <- c(-Inf, 0, 9, 10, 20, 70, 200, 201, Inf)
fcutpts2 <- cutpts2[is.finite(cutpts2)] # finite cutpoints
y2 <- rpois(n, lambda = mymu) # Same model as y1
ystar2 <- cut(y2, breaks = cutpts2, labels = FALSE)
table(ystar2) / sum(table(ystar2))
fit <- vglm(cbind(ystar,ystar2) ~ x2 + x3, fam =
ordpoisson(cutpoi = c(fcutpts,Inf,fcutpts2,Inf),
Levels = c(length(fcutpts)+1,length(fcutpts2)+1),
parallel = TRUE), trace = TRUE)
coef(fit, matrix = TRUE)
fit@extra
constraints(fit)
summary(depvar(fit)) # Some columns have all zeros
# }
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