# How to retrieve correlation matrix from glm models in R

I am using the gls function from the nlme package. You can copy and paste the following code to reproduce my analysis.

``````library(nlme)  # Needed for gls function

names(tlc) = c("id","trt","y0","y1","y4","y6")
tlc\$trt = factor(tlc\$trt, levels=c("P","A"), labels=c("Placebo","Succimer"))

# Convert to long format
tlc.long = reshape(tlc, idvar="id", varying=c("y0","y1","y4","y6"), v.names="y", timevar="time", direction="long")

# Create week numerical variable
tlc.long\$week = tlc.long\$time-1
tlc.long\$week[tlc.long\$week==2] = 4
tlc.long\$week[tlc.long\$week==3] = 6

tlc.long\$week.f = factor(tlc.long\$week, levels=c(0,1,4,6))
``````

The real analysis starts from here:

``````# Including group main effect assuming unstructured covariance:
mod1 = gls(y ~ trt*week.f, corr=corSymm(, form= ~ time | id),
weights = varIdent(form = ~1 | time), method = "REML", data=tlc.long)
summary(mod1)
``````

In the summary(mod1), the following parts of the results are of interest to me that I would love to retrieve.

``````Correlation Structure: General
Formula: ~time | id
Parameter estimate(s):
Correlation:
1     2     3
2 0.571
3 0.570 0.775
4 0.577 0.582 0.581
Variance function:
Structure: Different standard deviations per stratum
Formula: ~1 | time
Parameter estimates:
1        2        3        4
1.000000 1.325880 1.370442 1.524813
``````

The closest I can get is to use the following method.

``````temp = mod1\$modelStruct\$varStruct
Variance function structure of class varIdent representing
1        2        3        4
1.000000 1.325880 1.370442 1.524813
``````

However, whatever you stored with temp, I cannot get the five numbers out. I tried as.numeric(temp) and unclass(temp), but none of them works. There is no way I can just get the five numbers as a clean numeric vector.

-
Please provide a reproducible example. –  Sven Hohenstein Apr 13 at 6:08
You actually cannot use any data set to fit this model. Can you please post a few lines of `chol.long`. I also don't understand why your title asks for the correlation matrix, but the actual inquiry does not. `summary(mod1)\$corBeta` gets the model correlation matrix. –  Richard Scriven Apr 13 at 6:18
summary(mod1)\$corBeta gives the correlation matrix for the coefficients, the square root of which gives the s.e. for inference. I am asking for the correlation matrix for the error matrix. In this model, the it's unstructured variance-covariance matrix; so glm will estimates all of them. In an OLS regression, however, this is only a common variance (i.e. homoscedasticity) and all covariance between errors are 0. –  wen Apr 13 at 7:56
Ha, I think Richard mixed up correlation matrix of the coefficients and the correction matrix of the errors. –  Randy Lai Apr 13 at 8:02
I have just updated my example, so now it's reproducible. –  wen Apr 13 at 8:06

When you run `mod1\$modelStruct\$varStruct` in R console, R first inspects the class of it

``````> class(mod1\$modelStruct\$varStruct)
[1] "varIdent" "varFunc"
``````

and then dispatch the corresponding `print` function. In this case, it is `nlme:::print.varFunc`. i.e., the actual command running is `nlme:::print.varFunc(mod1\$modelStruct\$varStruct)`.

If you run `nlme:::print.varFunc`, you can see the function body of it

``````function (x, ...)
{
if (length(aux <- coef(x, uncons = FALSE, allCoef = TRUE)) >
0) {
cat("Variance function structure of class", class(x)[1],
"representing\n")
print(aux, ...)
}
else {
cat("Variance function structure of class", class(x)[1],
"with no parameters, or uninitialized\n")
}
invisible(x)
}
<bytecode: 0x7ff4bf688df0>
<environment: namespace:nlme>
``````

What it does is evaluating the `coef` and print it, and the unevaluated `x` is returned invisibly.

Therefore, in order to get the cor/var, you need

``````coef(mod1\$modelStruct\$corStruct, uncons = FALSE, allCoef = TRUE)
coef(mod1\$modelStruct\$varStruct, uncons = FALSE, allCoef = TRUE)
``````
-
Thank you so much! This is exactly what I need. I am really new to R. Could you please explain a little about your answer. It gives the right results, but I have no idea what you were saying and what are those "uncons = False" and "allCoef=True" supposed to mean? Thanks a million. –  wen Apr 13 at 8:10
I have added a more detailed explanation. You can do `?coef.varFunc` to see the meanings of `uncons` and `allCoef`. –  Randy Lai Apr 13 at 8:20