I am new to R and I am just learning about the `apply`

functions and how they work. I simply want to extract the coefficients from a `lm`

fit on a variable x by product color and brand across a several years.

I know I can create a for loop and subset the data by model year and fit it, but I think its time I start using more built in functions, so I want to be able to do it with the by function or one of the apply functions. Here is what I was thinking.

```
#some made up data
x<-rnorm(50,13400,1200)
color<-sample(factor(c("Red","Black","Blue","Green","White")),50,replace=T)
year<-sample(factor(2006:2012),50,replace=T)
brand<-sample(factor(c("A","B","C","D")),50,replace=T)
d<-data.frame(x,color,year,brand)
#now I want to fit the model lm(x~color+brand) for each year level
#this is what I was thinking...
tmp<-with(d,by(x,year,function(y) lm(x~color,data=y)))
sapply(tmp,coef)
```

Error in eval(predvars, data, env) : numeric 'envir' arg not of length one

I am basing this off the exapmle R gave when I entered `help(by)`

`with`

-paradigm and the`data=`

paradigm. Furthermore, the d$x variable had 50 distinct values, so you would ahve been passing single line dataframes to lm(). Looks like mplourde was able to discern your intent, so I will delete this comment in a bit after you accept his/her answer. – BondedDust Jul 1 '12 at 18:31