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I have a large dataframe (14552 rows by 15 columns) containing billing data from 2001 to 2007. I have used sqlFetch to get 2008 data. In order to append the 2008 data to the data of the preceding 7 years one would do as follows

alltime <-rbind(alltime,all2008)

Unfortunately that generates

Warning message: In [<-.factor(*tmp*, ri, value = c(NA, NA, NA, NA, NA, NA, NA, : invalid factor level, NAs generated

My guess is that there are some new patients whose names were not in the previous dataframe and therefore it would not know what level to give it. Another column is for the name of the referring doctor. A new referring doctor would cause the same problem.

The way R imports data and automatically works out what is numeric and what is not (and thereby makes it a factor) is wonderful - untill you have to manipulate it further and then it becomes a pain. How do I overcome my problem elegantly?

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This is odd. Factor's shouldn't cause this, in help to rbind is stated: "Factors have their levels expanded as necessary" (R-2.9.2). Maybe you could check exactly which column causes this? – Marek Oct 27 '09 at 22:31
What a great point Marek! The warning message freaked me. After reading your comment I went back to explore my data. All the new data appears to be there and additional levels have been added. At this stage I could just leave it as a warning that should be ignored - which is a dangerous habit to get into (since then one has to keep a database in their head of warnings to be taken seriously vs warnings to be ignored). How do I figure out where the warning message came from? – Farrel Oct 28 '09 at 13:25
up vote 26 down vote accepted

It could be caused by mismatch of types in two data.frames.

First of all check types (classes). To diagnostic purposes do this:

new2old <- rbind( alltime, all2008 ) # this gives you a warning
old2new <- rbind( all2008, alltime ) # this should be without warning

    alltime = sapply( alltime, class),
    all2008 = sapply( all2008, class),
    new2old = sapply( new2old, class),
    old2new = sapply( old2new, class)

I expect there be a row looks like:

            alltime  all2008   new2old  old2new
...         ...      ...       ...      ...
some_column "factor" "numeric" "factor" "character"
...         ...      ...       ...      ...

If so then explanation: rbind don't check types match. If you analyse rbind.data.frame code then you could see that the first argument initialized output types. If in first data.frame type is a factor, then output data.frame column is factor with levels unique(c(levels(x1),levels(x2))). But when in second data.frame column isn't factor then levels(x2) is NULL, so levels don't extend.

It means that your output data are wrong! There are NA's instead of true values

I suppose that:

  1. you create you old data with another R/RODBC version so types were created with different methods (different settings - decimal separator maybe)
  2. there are NULL's or some specific data in problematic column, eg. someone change column under database.


find wrong column and find reason why its's wrong and fixed. Eliminate cause not symptoms.

share|improve this answer
Yip. You are correct. in one data frame a column's class was a factor and in another it was a numeric. That messed things up badly. I converted the numeric to a factor and all was OK. Thank you for your guidance. There were some other discrepancies as well. For instance, factor-character discrepancy did not mess things up. – Farrel Oct 30 '09 at 19:16
You have right about factor-character, somewhere in code I found that levels for this combination will be unique(c(levels(x1),x2)). One thing: combination factor-character leads to a factor, combination character-factor to character. So it's better when types match. – Marek Oct 31 '09 at 0:20

An "easy" way is to simply not have your strings set as factors when importing text data.

Note that the read.{table,csv,...} functions take a stringsAsFactors parameter, which is by default set to TRUE. You can set this to FALSE while you're importing and rbind-ing your data.

If you'd like to set the column to be a factor at the end, you can do that too.

For example:

alltime <- read.table("alltime.txt", stringsAsFactors=FALSE)
all2008 <- read.table("all2008.txt", stringsAsFactors=FALSE)
alltime <- rbind(alltime, all2008)
# If you want the doctor column to be a factor, make it so:
alltime$doctor <- as.factor(alltime$doctor)
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I believe that you have several typo's in your answer... – griffin Oct 27 '09 at 19:07
Woops, thanks for pointing that out. Fixed (I think). – Steve Lianoglou Oct 28 '09 at 3:43

1) create the data frame with stringsAsFactor set to FALSE. This should resolve the factor-issue

2) afterwards don't use rbind - it messes up the column names if the data frame is empty. simply do it this way:

df[nrow(df)+1,] <- c("d","gsgsgd",4)


> df <- data.frame(a = character(0), b=character(0), c=numeric(0))

> df[nrow(df)+1,] <- c("d","gsgsgd",4)

1: In `[<-.factor`(`*tmp*`, iseq, value = "d") :
  invalid factor level, NAs generated
2: In `[<-.factor`(`*tmp*`, iseq, value = "gsgsgd") :
  invalid factor level, NAs generated

> df <- data.frame(a = character(0), b=character(0), c=numeric(0), stringsAsFactors=F)

> df[nrow(df)+1,] <- c("d","gsgsgd",4)

> df
  a      b c
1 d gsgsgd 4
share|improve this answer

As suggested in the previous answer, read the columns as character and do the conversion to factors after rbind. SQLFetch (I assume RODBC) has also the stringsAsFactors or the as.is argument to control the conversion of characters. Allowed values are as for read.table, e.g., as.is=TRUE or some column number.

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I had the same problem with type mismatches, especially with factors. I had to glue together two otherwise compatible datasets.

My solution is to convert factors in both dataframes to "character". Then it works like a charm :-)

    convert.factors.to.strings.in.dataframe <- function(dataframe)
        class.data  <- sapply(dataframe, class)
        factor.vars <- class.data[class.data == "factor"]
        for (colname in names(factor.vars))
            dataframe[,colname] <- as.character(dataframe[,colname])
        return (dataframe)

If you want to see the types in your two dataframes run (change var names):

    cbind("orig"=sapply(allSurveyData, class), 
          "merge" = sapply(curSurveyDataMerge, class),
          "eq"=sapply(allSurveyData, class) == sapply(curSurveyDataMerge, class)
share|improve this answer
very useful function to have, thanks. – PatrickT Jul 24 '13 at 17:50
mydf[sapply(mydf, is.factor)] <- lapply(mydf[sapply(mydf, is.factor)], as.character) seems like a simpler approach. – A Handcart And Mohair Aug 1 '13 at 17:59

here's a function to take the common row names of 2 data frames and do an rbind where we basically find the fields that are factors, add the new factors then do the rbind. This should take care of any factor issues:

rbindCommonCols<-function(x, y){

commonColNames = intersect(colnames(x), colnames(y))
x = x[,commonColNames]
y = y[,commonColNames]

colClassesX = sapply(x, class)
colClassesY = sapply(y, class)
classMatch = paste( colClassesX, colClassesY, sep = "-" )
factorColIdx = grep("factor", classMatch)

for(n in factorColIdx){ 
    x[,n] = as.factor(x[,n])
    y[,n] = as.factor(y[,n])

for(n in factorColIdx){ 
    x[,n] = factor(x[,n], levels = unique(c( levels(x[,n]), levels(y[,n]) )))
    y[,n] = factor(y[,n], levels = unique(c( levels(y[,n]), levels(x[,n]) )))  

res = rbind(x,y)


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