mvabund (version 3.13.1)

residuals.manyglm: Residuals for MANYGLM, MANYANY, GLM1PATH Fits

Description

Obtains Dunn-Smyth residuals from a fitted manyglm, manyany or glm1path object.

Usage


# S3 method for manyglm
residuals(object, …)

Arguments

object

a fitted object of class inheriting from "manyglm".

further arguments passed to or from other methods.

Value

A matrix of Dunn-Smyth residuals.

Details

residuals.manyglm computes Randomised Quantile or ``Dunn-Smyth" residuals (Dunn & Smyth 1996) for a manyglm object. If the fitted model is correct then Dunn-Smyth residuals are standard normal in distribution.

Similar functions have been written to compute Dunn-Smyth residuals from manyany and glm1path objects.

Note that for discrete data, Dunn-Smyth residuals involve random number generation, and will not return identical results on replicate runs. Hence it is worth calling this function multiple times to get a sense for whether your interpretation of results holds up under replication.

References

Dunn, P.K., & Smyth, G.K. (1996). Randomized quantile residuals. Journal of Computational and Graphical Statistics 5, 236-244.

See Also

manyglm, manyany, glm1path, plot.manyglm.

Examples

Run this code
# NOT RUN {
data(spider)
spiddat <- mvabund(spider$abund)
X <- spider$x

## obtain residuals for Poisson regression of the spider data, and doing a qqplot:
glmP.spid  <- manyglm(spiddat~X, family="poisson")
resP       <- residuals(glmP.spid)
qqnorm(resP)
qqline(resP,col="red")
#clear departure from normality.

## try again using negative binomial regression:
glmNB.spid <- manyglm(spiddat~X, family="negative.binomial")
resNB      <- residuals(glmNB.spid)
qqnorm(resNB)
qqline(resNB,col="red")
#that looks a lot more promising.

#note that you could construct a similar plot directly from the manyglm object using
plot(glmNB.spid, which=2)

# }

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