I am using `ddply`

to execute `glm`

on subsets of my data. I am having difficulty accessing the estimated Y values. I am able to get the model parameter estimates using the below code, but all the variations I've tried to get the fitted values have fallen short. The dependent and independent variables in the `glm`

model are column vectors, as is the `"Dmsa"`

variable used in the `ddply`

operation.

Define the model:

`Model <- function(df){coef(glm(Y~D+O+B+A+log(M), family=poisson(link="log"), data=df))}`

Execute the model on subsets:

`Modrpt <- ddply(msadata, "Dmsa", Model)`

Print `Modrpt`

gives the model coefficients, but no Y estimates.

I know that if I wasn't using `ddply`

, I can access the `glm`

estimated Y values by using the code:

`Model <- glm(Y~D+O+B+A+log(M), family=poisson(link="log"), data=msadata)`

`fits <- Model$fitted.values`

I have tried both of the following to get the fitted values for the subsets, but no luck:

`fits <- fitted.values(ddply(msadata, "Dmsa", Model))`

`fits <- ddply(msadata, "Dmsa", fitted.values(Model))`

I'm sure this is a very easy to code...unfortunately, I'm just learning R. Does anyone know where I am going wrong?

`dput( msadata)`

or use a built-in dataset like`data(iris)`

– Simon O'Hanlon Aug 6 '13 at 14:00`coef`

by`fitted`

in your`Model`

function. – agstudy Aug 6 '13 at 14:01