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I'm having problems to run a robust linear regression model (using rlm from the MASS library) over a list of dataframes.

Reproducible example:

var1 <- c(1:100)
var2 <- var1*var1
df1  <- data.frame(var1, var2)
var1 <- var1 + 50
var2 <- var2*2
df2  <- data.frame(var1, var2)
lst1 <- list(df1, df2)

Linear model (works):

lin_mod <- lapply(lst1, lm, formula = var1 ~ var2)
summary(lin_mod[[1]])

My code for the robust model:

rob_mod <- lapply(lst1, MASS::rlm, formula = var1 ~ var2)

gives the following error:

Error in rlm.default(X[[i]], ...) : 
argument "y" is missing, with no default

How could I solve this?

The error in my actual data is:

Error in qr.default(x) : NA/NaN/Inf in foreign function call (arg 1)
In addition: Warning message:
In storage.mode(x) <- "double" : NAs introduced by coercion    
  • as you can see here ?lm provides only a formula method. In contrast ?rlm provides both (formula and x,y). thus, you have to specify data to say rlm to use the formula method as in Rui Barradas answer. – Jimbou Jul 25 '18 at 15:05
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Your call is missing the data argument. lapply will call FUN with each member of the list as the first argument of FUN but data is the second argument to rlm.

The solution is to define an anonymous function.

lin_mod <- lapply(lst1, function(DF) MASS::rlm(formula = var1 ~ var2, data = DF))
summary(lin_mod[[1]])
#
#Call: rlm(formula = var1 ~ var2, data = DF)
#Residuals:
#    Min      1Q  Median      3Q     Max 
#-18.707  -5.381   1.768   6.067   7.511 
#
#Coefficients:
#              Value   Std. Error t value
#(Intercept) 19.6977  1.0872    18.1179
#var2         0.0092  0.0002    38.2665
#
#Residual standard error: 8.827 on 98 degrees of freedom
  • It would also suffice I think to not use the anonymous function and instead directly call the formula method via MASS:::rlm.formula. – joran Jul 25 '18 at 15:06
  • @joran But then how would lapply know where to put the list members? The problem would be the same. – Rui Barradas Jul 25 '18 at 15:09
  • 1
    It would work exactly the same as with lm. Try it, it works: lapply(lst1, MASS:::rlm.formula, formula = var1 ~ var2). – joran Jul 25 '18 at 15:11
  • thank you, that helped a lot. Why does my code work for the linear model though? The order of the first arguments of the two functions looks similar in the documentation. – felixR Jul 25 '18 at 15:12
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    @felixR Rui's answer is correct, but the explanation is perhaps a little confusing. The issue isn't really the order of the arguments, it's the existence of the additional S3 method, as mentioned in the other answer. That creates some ambiguity in the dispatch and so the default method is called for rlm instead of the formula method. Either calling that method directly, or specifying the other argument both force the use of the formula method. – joran Jul 25 '18 at 15:16
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You can also try a purrr:map solution:

library(tidyverse)
map(lst1, ~rlm(var1 ~ var2, data=.))

or as joran commented

map(lst1, MASS:::rlm.formula, formula = var1 ~ var2)

As you can see here ?lm provides only a formula method. In contrast ?rlm provides both (formula and x, y). Thus, you have to specify data= to say rlm to explicitly use the formula method. Otherwise rlm wants x and y as input.

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