This question builds on the answer that Simon and James provided here

The `dlply`

function worked well to give me Y estimates within my data subsets. Now, my challenge is getting these Y estimates and residuals back into the original data frame to calculate goodness of fit statistics and for further analysis.

I was able to use `cbind`

to convert the `dlply`

output lists to row vectors, but this doesn't quite work as the result is (sorry about the poor markdown).

```
model <- function(df){ glm(Y~D+O+A+log(M), family=poisson(link="log"), data=df)}
Modrpt <- ddply(msadata, "Dmsa", function(x)coef(model(x)))
Modest <- cbind(dlply(msadata, "Dmsa", function(x) fitted.values(model(x))))
Subset name | Y_Estimates
-------------------------
Dmsa 1 | c(4353.234, 234.34,...
Dmsa 2 | c(998.234, 2543.55,...
```

This doesn't really answer the mail, because I need to get the individual Y estimates (separated by commas in the Y_estimates column of the `Modest`

data frame) into my `msadata`

data frame.

Ideally, and I know this is incorrect, but I'll put it here for an example, I'd like to do something like this:

```
msadata$Y_est <- cbind(dlply(msadata, "Dmsa", function(x)fitted.values(model(x))))
```

If I can decompose the list into individual Y estimates, I could join this to my `msadata`

data frame by `"Dmsa"`

. I feel like this is very similar to Michael's answer here, but something is needed to separate the list elements prior to employing Michael's suggestion of `join()`

or `merge()`

. Any ideas?