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I have this csv file (fm.file):


And so on.

I run this commands:

fm.data <- as.xts(read.zoo(file=fm.file,format='%d/%m/%Y',tz='',header=TRUE,sep=','))

And I get the following:

[1] TRUE

How do I get the fm.data to be numeric without loosing its date index. I want to perform some statistics operations that require the data to be numeric.

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3 Answers 3

I was puzzled by two things: It didn't seem that that 'read.zoo' should give you a character matrix, and it didn't seem that changing it's class would affect the index values, since the data type should be separate from the indices. So then I tried to replicate the problem and get a different result:

txt <- "Date,FM1,FM2
fm.data <- as.xts(read.zoo(file=textConnection(txt),format='%d/%m/%Y',tz='',header=TRUE,sep=','))
#[1] FALSE

An ‘xts’ object from 2011-02-28 to 2011-03-04 containing:
  Data: num [1:5, 1:2] 14.6 14.6 14.6 14.6 14.6 ...
 - attr(*, "dimnames")=List of 2
  ..$ : NULL
  ..$ : chr [1:2] "FM1" "FM2"
  Indexed by objects of class: [POSIXct,POSIXt] TZ: 
  xts Attributes:  
List of 2
 $ tclass: chr [1:2] "POSIXct" "POSIXt"
 $ tzone : chr ""

zoo- and xts-objects have their data in a matrix accessed with coredata and their indices are a separate set of attributes.

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Why not simply use read.csv and then convert the first column to an Date object using as.Date

> x <- read.csv(fm.file, header=T)
> x$Date <- as.Date(x$Date, format="%d/%m/%Y")
> x
        Date      FM1      FM2
1 2011-02-28 14.57161 11.46946
2 2011-03-01 14.57220 11.45751
3 2011-03-02 14.57480 11.48718
4 2011-03-03 14.57556 11.48780
5 2011-03-04 14.57686 11.49025
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I think the problem is you have some dirty data in you csv file. In other words FM1 or FM2 columns contain a character, somewhere, that stops it being interpreted as a numeric column. When that happens, XTS (which is a matrix underneath) will force the whole thing to character type.

Here is one way to use R to find suspicious data:

s <- scan(fm.file,what="character")
# s is now a vector of character strings, one entry per line
s <- s[-1]  #Chop off the header row
all(grepl('^[-0-9,.]*$',s,perl=T)) #True means all your data is clean
s[ !grepl('^[-0-9,.]*$',s,perl=T) ]
which( !grepl('^[-0-9,.]*$',s,perl=T) ) + 1

The second-to-last line prints out all the csv rows that contain characters you did not expect. The last line tells you which rows in the file they are (+1 because we removed the header row).

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