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Need help to get around the below error while performing data imputation in R using "missforest" package.

> imputed<- missForest(dummy, maxiter = 10, ntree = 100, variablewise = TRUE,
+                      decreasing = TRUE, verbose = TRUE,
+                      mtry = floor(sqrt(ncol(dummy))), replace = TRUE)
Error in sample.int(length(x), size, replace, prob) : 
  invalid first argument
2

Had the same problem. Transforming xmis object with as.data.frame helped. In your case it would be something like:

dummy <- as.data.frame(dummy)    
imputed<- missForest(dummy, maxiter = 10, ntree = 100, variablewise = TRUE,
                      decreasing = TRUE, verbose = TRUE,
                      mtry = floor(sqrt(ncol(dummy))), replace = TRUE)
3
  • I thought of that and did that. Even then I faced the issue. Anything else that might be causing the error. – Sandeep Oct 22 '17 at 1:23
  • What is the class of dummy in your case? – mrbubu Oct 22 '17 at 18:32
  • > class(dummy) [1] "data.frame" – Sandeep Oct 23 '17 at 19:14
0

if you are using fread() to read the data, try using read.csv() instead. I had the same problem while using fread() to read the data, even after converting the data.table to data.frame by using as.data.frame() later. But, later I read the data by using read.csv and the problem got solved.

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I know this is 2 years old but I came across this trying to solve this problem and eventually fixed it, so I'm guessing other people will do same.

I had oncology data and had written descriptions (where cancer was) next to my codes (sitecodes 1-8). You need to erase the written descriptions so your spreadsheet/data only has coded entries, then missForest will work.

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  • 1
    The preamble is not required. Try to stick to just the facts. What exact steps would someone follow to fix the problem? Maybe add more details about the situation where the error occurred and why removing the description solves it. – HackSlash Feb 7 '20 at 20:18
0

As pointed out by others, missForest() requires input data to be of class data.frame or matrix. If, like many people, you imported or manipulated your data using functions of the tidyverse packages, then your dataset is likely to be a tibble (class tbl_df) and will thus need to be converted with as.data.frame() before imputing the missing values.
As OP said that his/her data were contained in a data.frame, the problem perhaps comes from the class of the variables. According to this page, the same error message can appear if you have date variables (class date or difftime). Be sure to work with numeric or factor variables only.

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