## Moths Data

### Description

The `moths`

data frame has 41 rows and 4 columns.
These data are from a study of the effect of habitat on the
densities of two species of moth (A and P). Transects were
set across the search area. Within transects, sections
were identified according to habitat type.

### Usage

moths

### Format

This data frame contains the following columns:

- meters
length of transect

- A
number of type A moths found

- P
number of type P moths found

- habitat
a factor with levels
`Bank`

,
`Disturbed`

,
`Lowerside`

,
`NEsoak`

,
`NWsoak`

,
`SEsoak`

,
`SWsoak`

,
`Upperside`

### Source

Sharyn Wragg, formerly of Australian National University

### Examples

print("Quasi Poisson Regression - Example 8.3")
rbind(table(moths[,4]), sapply(split(moths[,-4], moths$habitat), apply,2,
sum))
A.glm <- glm(formula = A ~ log(meters) + factor(habitat), family =
quasipoisson, data = moths)
summary(A.glm)
# Note the huge standard errors
moths$habitat <- relevel(moths$habitat, ref="Lowerside")
A.glm <- glm(A ~ habitat + log(meters), family=quasipoisson, data=moths)
summary(A.glm)$coef
## Consider as another possibility
A2.glm <- glm(formula = A ~ sqrt(meters) + factor(habitat), family =
quasipoisson(link=sqrt), data = moths)
summary(A2.glm)