The Eco-Stats package contains functions and data supporting the
Eco-Stats text (Warton, 2022, Springer), and solutions to exercises.
Functions include tools for using simulation envelopes in diagnostic
plots, also applicable to multivariate linear models, and a parametric
bootstrap function that can be used in place of an anova
call for hypothesis testing via simulation, for many types of regression
models. Datasets mentioned in the package are included here (where not
available elsewhere) and vignettes work through code chunks and
exercises from the textbook, one chapter at a time.
The command plotenvelope
will take a fitted object and
construct standard residual plots with global envelopes added around
points (for quantile plots) and around smoothers (for residual plots),
constructed via simulation. These are constructed using the
GET
package as global envelopes, which is important for
interpretation – it means that when model assumptions are correct, 95%
of quantile plot envelopes (at confidence level 95%) should contain the
data (or smoother) over the whole plot. (Pointwise envelopes
would have been easier to construct, but are much harder to interpret
because they don’t control the chance of missing the data globally,
across the whole plot. A 95% pointwise envelope, constructed when
assumptions are satisfied, might for example miss some of the
data 60% of the time.)
plotenvelope
will work on lots of different types of
fitted objects – pretty much anything that comes with a
simulate
function that behaves in a standard way. A
simulate.mlm
and simulate.manyglm
functions
have been written in this package specifically so that
plotenvelope
also works for multivariate models fitted
using lm
or mvabund::manyglm
.
library(ecostats)
data(iris)
= with(iris, cbind(Sepal.Length,Sepal.Width,Petal.Length,Petal.Width))
Y =lm(Y~Species,data=iris)
iris.mlm# check normality assumption:
par(mfrow=c(1,2),mar=c(3,3,1,1),mgp=c(1.75,0.75,0))
plotenvelope(iris.mlm,n.sim=199)
For mlm
objects, this function will compute conditional
residuals and fitted values, that is, they are computed for each
response conditional on all other responses being observed, via the
cpredict
and cresiduals
functions. This is
done because the full conditionals of a distribution are known to be
diagnostic of joint distributions, hence any violation of the
multivariate normality assumption will be expressed as a violation of
assumptions of these full conditional models. The full conditionals are
well-known to follow a linear model, as a function of all other
responses as well as predictors.
The qqenvelope
function can be applied for a normal
quantile plot, with global envelope, to either a fitted model or a
sample of data:
=rnorm(20)
yqqenvelope(y)
anova
tests using a parametric bootstrapThe command anovaPB
computes analysis of variance (or
deviance) tables for two fitted model objects, but with the -value
estimated using a parametric bootstrap – by repeatedly simulating new
responses from the fitted model under the null hypothesis. This will
work on lots of different types of fitted objects – like
plotenvelope
, it should work on pretty much anything that
comes with a simulate
function that behaves in a standard
way. These fitted models also need to respond to either
anova
or logLik
.
While the interface is written to be a lot like anova
,
it requires two fitted objects to be specified – the first being a fit
under the null hypothesis, and the second being the fit under the
alternative.
# generate random Poisson data and a predictor:
= rpois(50,lambda=1)
y = 1:50
x # fit a Poisson regressions with and without x:
= glm(y~x,family=poisson())
rpois_glm = glm(y~1,family=poisson())
rpois_int # use the parametric bootstrap to test for an effect of x (will usually be non-significant)
anovaPB(rpois_int,rpois_glm,n.sim=99)
#> Analysis of Deviance Table
#>
#> Model 1: y ~ 1
#> Model 2: y ~ x
#> Resid. Df Resid. Dev Df Deviance
#> 1 49 59.738
#> 2 48 59.680 1 0.05763 0.8
All datasets used in the Eco-Stats text, where not available elsewhere, are supplied in this package. For example:
data(aphids)
=c(rgb(1,0,0,alpha=0.5),rgb(0,0,1,alpha=0.5)) #transparent colours
colswith(aphids$oat, interaction.plot(Time,Plot,logcount,legend=FALSE,
col=cols[Treatment], lty=1, ylab="Counts [log(y+1) scale]",
xlab="Time (days since treatment)") )
legend("bottomleft",c("Excluded","Present"),col=cols,lty=1)