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I am trying to create a zoo object in R from the following csv file: http://www.cboe.com/publish/scheduledtask/mktdata/datahouse/Skewdailyprices.csv

The problem seems to be that there are a few minor inconsistencies in the period from 2/27/2006 to 3/20/2006 (some extra commas and an "x") that lead to problems.

I am looking for a method that reads the complete csv file into R automatically. There is a new data point every business day and when doing manual prepocessing you would have to re-edit the file every day by hand.

I am not sure if these are the only problems with this file but I am running out of ideas how to create a zoo object out of this time series. I think that with some more knowledge of R it should be possible.

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Have you tried editing those sixteen lines by hand in a text editor and then trying again? –  joran Mar 5 '12 at 17:04
No, I haven't because I am looking for a method that reads the csv file into R automatically. There is a new data point every business day and you would have to re-edit every time by hand... –  vonjd Mar 5 '12 at 17:07
In that case, perhaps your question should reflect your actual problem...? –  joran Mar 5 '12 at 17:08
Good point, joran! Done... –  vonjd Mar 5 '12 at 17:13
My suggestion disappeared with Richie's answer. I have to run, but someone else can pick this up and write an answer if they like: try using readLines, process each one using lapply and then stick them back together with do.call. –  joran Mar 5 '12 at 17:25

2 Answers 2

up vote 5 down vote accepted

Use colClasses to tell it that there are 4 fields and use fill so it knows to fill them if they are missing on any row. Ignore the warning:

URL <- "http://www.cboe.com/publish/scheduledtask/mktdata/datahouse/Skewdailyprices.csv"
z <- read.zoo(URL, sep = ",", header = TRUE, format = "%m/%d/%Y", skip = 1, 
         fill = TRUE, colClasses = rep(NA, 4))
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Wow, that seems to do the trick! :-) –  vonjd Mar 5 '12 at 17:36

It is a good idea to separate the cleaning and analysis steps. Since you mention that your dataset changes often, this cleaning must be automatic. Here is a solution for autocleaning.

#Read in the data without parsing it
lines <- readLines("Skewdailyprices.csv")

#The bad lines have more than two fields 
n_fields <- count.fields(
  sep = ",", 
  skip = 1

#View the dubious lines
lines[n_fields != 2]

#Fix them
library(stringr) #can use gsub from base R if you prefer
lines <- str_replace(lines, ",,x?$", "")

#Write back out to file
writeLines(lines[-1], "Skewdailyprices_cleaned.csv")

#Read in the clean version
sdp <- read.zoo(
    format = "%m/%d/%Y", 
    header = TRUE, 
    sep = ","
share|improve this answer
Huh. This throws an error for me. I was going to suggest using readLines and then processing them via lapply to remove problem rows. –  joran Mar 5 '12 at 17:21
@joran: Not sure what I did, but my first answer was nonsense. This version seems to work. –  Richie Cotton Mar 5 '12 at 17:33

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