I'm having trouble converting an SAS script to the corresponding R script.

The model is a repeated measures analysis of the response (`resp`

) based on treatment (`trt`

) with plot (`plot`

) nested in the treatment.

SAS code:

```
data data_set;
input trt $ plot time resp;
datalines;
Burn 1 1 27
Burn 1 9 25
Burn 1 12 18
Burn 1 15 21
Burn 2 1 5
Burn 2 9 15
Burn 2 12 10
Burn 2 15 12
...
Unburn 1 1 57
Unburn 1 9 46
Unburn 1 12 49
Unburn 1 15 51
Unburn 2 1 43
Unburn 2 9 59
Unburn 2 12 59
Unburn 2 15 60
proc mixed data = data_set;
class trt plot time;
model resp = trt time trt*time / ddfm = kr;
repeated time / subject = trt(plot) type = vc rcorr;
run;
```

R code attempted (loading the data set from a CSV file):

```
library(nlme)
data.set <- read.csv( "data_set.csv" )
data.set$plot <- factor( data.set$plot )
data.set$time <- factor( data.set$time )
model1 <- lme( resp ~ trt + time + trt:time, data = data.set, random = ~1 | plot )
```

This works, but isn't the desired model. Other attempts I've tried have generally resulted in the error:

```
Error in getGroups.data.frame(dataMix, groups) :
invalid formula for groups
```

Basically I'm off in the weeds here...

Question 1: how to specify the same model in R as what is already specified in SAS?

Question 2: I want to be able to change the covariance matrix to replicate other work done in SAS. I believe I know how to do this with the correlation parameter for the lme function. But please correct me if I'm wrong.

Thanks in advance.

`lme(mpg ~ wt, data = mtcars)`

also gives same error. When you look at example in help page, and do`class(Orthodont)`

, you see it is not a straight data frame. – Gopala Apr 22 '16 at 14:15