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I am stumped. Normally, read.csv works as expected, but I have come across an issue where the behavior is unexpected. It most likely is user error on my part, but any help will be appreciated.

Here is the URL for the file

Here is my code to get the file, unzip, and read it in:

 URL <- ""
 download.file(URL, destfile="")
 tmp <- read.table("sfa0910.csv", 
                   header=T, stringsAsFactors=F, sep=",", row.names=NULL)

Here is my problem. When I open the data csv data in Excel, the data look as expected. When I read the data into R, the first column is actually named row.names. R is reading in one extra row of data, but I can't figure out where the "error" occurs that is causing row.names to be a column. Simply, it looks like the data shifted over.

However, what is strange is that the last column in R does appear to contain the proper data.

Here are a few rows from the first few columns:

1    100654      R     4496       R     1044       R       23
2    100663      R    10646       R     1496       R       14
3    100690      R      380       R        5       R        1
4    100706      R     6119       R      774       R       13
5    100724      R     4638       R     1209       R       26

Any thoughts on what I could be doing wrong?

share|improve this question
Don't ever assume Excel correctly represents the contents of your CSV file. Open the CSV in a text editor instead (not that this is the cause of your problem, but as a general rule). – Joshua Ulrich Aug 15 '12 at 23:36
remove the row.names = NULL argument. – mnel Aug 15 '12 at 23:39
@ttmaccer - that's strange, you don't need to authenticate into the site. I just tried it from the web and it auto-downloaded the file to my computer. I am using Chrome. – Btibert3 Aug 15 '12 at 23:41
@mnel - I tried this as well, but it didn't work. What is strange is that is that the last column of data in R appears to be ok. It's not like I can just shift the column names. – Btibert3 Aug 15 '12 at 23:42
I think this points to the problem, but I can't find the offending line in the csv dim(read.csv("sfa0910.csv", header = F, skip = 1)) is 6852 452 whereas length(unlist(strsplit(readLines('sfa0910.csv',1), ','))) is 451. – mnel Aug 16 '12 at 0:30
up vote 5 down vote accepted

I have a fix maybe based on mnel's comments

dat<-readLines(paste("sfa", '0910', ".csv", sep=""))
> head(ncommas)
[1] 450 451 451 451 451 451

all columns after the first have an extra seperator which excel ignores.

for(i in seq_along(dat)[-1]){

tmp<-read.table('temp.csv',header=T, stringsAsFactors=F, sep=",")

> tmp[1:5,1:7]
1 100654        R    4496        R    1044        R      23
2 100663        R   10646        R    1496        R      14
3 100690        R     380        R       5        R       1
4 100706        R    6119        R     774        R      13
5 100724        R    4638        R    1209        R      26

the moral of the story .... listen to Joshua Ulrich ;)

Quick fix. Open the file in excel and save it. This will also delete the extra seperators.


dat<-readLines(paste("sfa", '0910', ".csv", sep=""),n=1)
tmp <- read.table(paste("sfa", '0910', ".csv", sep=""), 
                   header=F, stringsAsFactors=F,col.names=c(dum.names,'XXXX'),sep=",",skip=1)
share|improve this answer
Good call! This was my exact problem as well – ZnArK Mar 7 '13 at 4:36

My tip: use count.fields() as a quick diagnostic when delimited files do not behave as expected.

First, count the number of fields using table():

table(count.fields("sfa0910.csv", sep = ","))
# 451  452 
#   1 6852

That tells you that all but one of the lines contains 452 fields. So which is the aberrant line?

which(count.fields("sfa0910.csv", sep = ",") != 452)
# [1] 1

The first line is the problem. On inspection, all lines except the first are terminated by 2 commas.

The question now is: what does that mean? Is there supposed to be an extra field in the header row which was omitted? Or were the 2 commas appended to the other lines in error? It may be best to contact whoever generated the data, if possible, to clarify the ambiguity.

share|improve this answer
+1 for highlighting count.fields. A nice function for this sort of processing by the looks of it. – thelatemail Aug 16 '12 at 2:23

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