# Looping all pairwise comparisons from a list in R

In my R code below, suppose I want to compare all unique 2 `m` objects using a similar R routine. For example, to compare `m1` and `m2`, my routine is:

`pchisq(2 * (logLik(m2) - logLik(m1)), df = abs(m1\$df.residual - m2\$df.residual), lower = F)`

Question:

I was wondering how I could make a function to make all unique pairwise comparisons for all `m` objects using my routine?

Here is what I've tried without success:

``````## Suppose we have 4 `m` objects: `m1...m4` (6 unique pairwise comparisons possible)

m1 <- lm(hp ~ vs, mtcars)
m2 <- lm(hp ~ vs*wt, mtcars)
m3 <- lm(hp ~., mtcars)
m4 <- lm(hp ~ vs * gear * wt, mtcars)

compare <- function(...){

m <- list(...)
L <- length(m) - 1

lapply(1:L, function(i) pchisq(2 * (logLik(m[[i+1]]) - logLik(m[[i]])), df = abs(m[[i]]\$df.residual - m[[i+1]]\$df.residual), lower.tail = FALSE) )

}
# Example of use:
compare(m1, m2, m3, m4)
``````
• Not what you asked for but possibly what you really need is: `anova(m1, m2, m4, m3, test = "Chisq")` Feb 5, 2019 at 22:02
• The class of the models shown in the question is `lm` and `anova` supports that and there are many other methods as well. If you are using something not shown suggest you mention it. Feb 5, 2019 at 22:14

You can use `combn` to get all combinations you want to compare:

``````compare <- function(...){

m <- list(...)
n_mod <- length(m)
names(m) <- sapply(substitute(list(...))[-1], deparse)
combs <- t(combn(x = names(m), m = 2))

comp_value <- apply(X = combs, MARGIN = 1, function(ind) pchisq(2 * (logLik(m[[ind]]) - logLik(m[[ind]])), df = abs(m[[ind]]\$df.residual - m[[ind]]\$df.residual), lower.tail = FALSE))
df_out <- data.frame(combs, comp_value)
names(df_out) <- c("mod_1", "mod_2", "comp_value")

return(df_out)
}
``````

So, to make it easier to read the result, you can return a `data.frame` with all the comparisons.

Then

``````compare(m1, m2, m3, m4)
mod_1 mod_2   comp_value
1    m1    m2 2.391012e-02
2    m1    m3 7.253068e-08
3    m1    m4 1.248692e-06
4    m2    m3 2.735901e-07
5    m2    m4 4.256098e-06
6    m3    m4 1.000000e+00
``````
• Douglas, thank you once again. But I have realized that your function throws an error when I compare 2 fitted models from the `glmmTMB` package, like so: `m1 <- glmmTMB(count~ mined + (1|site), zi=~mined, family=poisson, data=Salamanders)` and `m2 <- glmmTMB(count~spp + mined + (1|site), zi=~spp + mined, family=nbinom2, Salamanders)`. And now when I do `compare(m1, m2)`, I get the following error: `Error in -object\$fit\$objective : invalid argument to unary operator`. The problem is with your third line (containing `sapply`)? Feb 22, 2019 at 5:24
• The problem is that the `glmmTMB` class does not have this entry: `m1\$df.residuals`. Feb 23, 2019 at 22:03
• Douglas, thank you. hummm, could you possibly think of a fix? Feb 24, 2019 at 0:39
• In this class you can get the degrees of freedom using `glmmTMB:::df.residual.glmmTMB(mod)`. So you need to use this code instead of `mod\$df.residuals` in the function. In addition, you can add a step in the function: `if(class(mod) == "glmmTMB") df <- glmmTMB:::df.residual.glmmTMB(mod)` otherwise use the current function. Feb 24, 2019 at 16:16