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I need help reading a text datafile with unformatted variable name in the following structure:

     a_ID            =    259412258      494776
     a_SID            =     2081
     a_cor       =          434
     a_FAT          =        25000       50000       75000      100000
     125000      150000      175000      200000      225000      250000
     275000      300000      325000      350000      375000      400000
     425000      450000      475000      500000      525000      550000
     575000      600000      625000      650000      675000      700000
     725000      750000      775000      800000      825000      850000
     875000      900000      925000      950000      975000
     a_loc                 =   2147483647  2147483647   -73356703   -73355202
     -73353701   -73352130   -73350632   -73349210   -73347648   -73346229
     a_soc                  =   2147483647  2147483647   272263158   272261759
     272260359   272258876   272257473   272256153   272254668   272253346

Each variable is of unequal length and begins with a_ . Extra points for pulling out certain variables by name.The unequal length can be filled with NA's. I have tried scan()

     x <- scan(file, what=list(NULL, name=character()))

which returns a list with everything as character.Also, x = read.table(file, header = T, sep = ",") returns a dataframe with a single variable. I read about rephape split function but I haven't been able to figure out how to use it in the above case. Any help would be highly appreciated.

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2 Answers 2

up vote 1 down vote accepted

Here is a possible approach, modified without the assumption of line wraps. It's pretty much the same as the original, with a couple of additional steps:

First, some sample data:

cat("a_ID    =   259412258   494776",
    "a_SID   =   2081",
    "a_cor   =   434",
    "a_FAT   =   25000   50000   75000   100000  125000  150000  175000",
    "25000   50000   75000   100000  125000  150000  175000",
    "25000   50000   75000   100000  125000  150000  175000",
    "a_loc   =   2147483647  2147483647  -73356703   -73355202",
    "a_soc   =   2147483647  2147483647   272263158", 
    sep = "\n", file = "test.txt")

Read the lines into R, do a little bit of processing, and proceed with read.table as originally suggested:

X <- readLines("test.txt")
headers <- grepl("a_", X)
X[!headers] <- gsub("(.*)", "  =  \\1", X[!headers])
X <- read.table(text = X, sep = "=", strip.white = TRUE, 
                header = FALSE, stringsAsFactors=FALSE)
X
#      V1                                                     V2
# 1  a_ID                                     259412258   494776
# 2 a_SID                                                   2081
# 3 a_cor                                                    434
# 4 a_FAT 25000   50000   75000   100000  125000  150000  175000
# 5       25000   50000   75000   100000  125000  150000  175000
# 6       25000   50000   75000   100000  125000  150000  175000
# 7 a_loc          2147483647  2147483647  -73356703   -73355202
# 8 a_soc                     2147483647  2147483647   272263158

Change the blanks in "V1" to NA, and fill them in using na.locf from "zoo". Use aggregate to paste together all the lines from a given "V1".

X$V1[X$V1 == ""] <- NA
library(zoo)
X <- na.locf(X)
X <- aggregate(V2 ~ V1, X, paste, collapse = "   ")

Add a new delimiter, and use concat.split to split the data.

X$V2 <- gsub("\\s+", "|", X$V2)
install.packages("splitstackshape")
library(splitstackshape)
Y <- concat.split(X, "V2", "|", drop = TRUE)
Y
#      V1       V2_1       V2_2      V2_3      V2_4   V2_5   V2_6   V2_7  V2_8  V2_9
# 1 a_cor        434         NA        NA        NA     NA     NA     NA    NA    NA
# 2 a_FAT      25000      50000     75000    100000 125000 150000 175000 25000 50000
# 3  a_ID  259412258     494776        NA        NA     NA     NA     NA    NA    NA
# 4 a_loc 2147483647 2147483647 -73356703 -73355202     NA     NA     NA    NA    NA
# 5 a_SID       2081         NA        NA        NA     NA     NA     NA    NA    NA
# 6 a_soc 2147483647 2147483647 272263158        NA     NA     NA     NA    NA    NA
#   V2_10  V2_11  V2_12  V2_13  V2_14 V2_15 V2_16 V2_17  V2_18  V2_19  V2_20  V2_21
# 1    NA     NA     NA     NA     NA    NA    NA    NA     NA     NA     NA     NA
# 2 75000 100000 125000 150000 175000 25000 50000 75000 100000 125000 150000 175000
# 3    NA     NA     NA     NA     NA    NA    NA    NA     NA     NA     NA     NA
# 4    NA     NA     NA     NA     NA    NA    NA    NA     NA     NA     NA     NA
# 5    NA     NA     NA     NA     NA    NA    NA    NA     NA     NA     NA     NA
# 6    NA     NA     NA     NA     NA    NA    NA    NA     NA     NA     NA     NA

Use t to "transpose" as suggested before.

Z <- setNames(data.frame(t(Y[-1])), Y[[1]])
Z
#       a_cor  a_FAT      a_ID      a_loc a_SID      a_soc
# V2_1    434  25000 259412258 2147483647  2081 2147483647
# V2_2     NA  50000    494776 2147483647    NA 2147483647
# V2_3     NA  75000        NA  -73356703    NA  272263158
# V2_4     NA 100000        NA  -73355202    NA         NA
# V2_5     NA 125000        NA         NA    NA         NA
# V2_6     NA 150000        NA         NA    NA         NA
# V2_7     NA 175000        NA         NA    NA         NA
# V2_8     NA  25000        NA         NA    NA         NA
# V2_9     NA  50000        NA         NA    NA         NA
# V2_10    NA  75000        NA         NA    NA         NA
# V2_11    NA 100000        NA         NA    NA         NA
# V2_12    NA 125000        NA         NA    NA         NA
# V2_13    NA 150000        NA         NA    NA         NA
# V2_14    NA 175000        NA         NA    NA         NA
# V2_15    NA  25000        NA         NA    NA         NA
# V2_16    NA  50000        NA         NA    NA         NA
# V2_17    NA  75000        NA         NA    NA         NA
# V2_18    NA 100000        NA         NA    NA         NA
# V2_19    NA 125000        NA         NA    NA         NA
# V2_20    NA 150000        NA         NA    NA         NA
# V2_21    NA 175000        NA         NA    NA         NA
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2  
Not responsive. The input had some single lines and some multiple line data. It's very easy to do the single line of data case. –  BondedDust Aug 25 '13 at 4:11
    
@DWin, I am assuming that this was because of text wrapping, not because of the actual data file. –  Ananda Mahto Aug 25 '13 at 4:12
    
@Ananda, Thanks Ananda ! Your "splitstackshape" package rocks ! –  Arihant Aug 25 '13 at 4:19
    
@AnandaMahto, the actual data has multiple lines, similar to the example. The above solution given by Ananda works after reformatting the data. I can't use the above solution for a bigger data where manual reformatting won't be practical. –  Arihant Aug 25 '13 at 4:52
1  
@Arihant, updated with some slight alterations. Also, although it doesn't apply to this question, you might want to install the development version of "splitstackshape" since some of the other functions have been made more efficient in that version. –  Ananda Mahto Aug 25 '13 at 5:38
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If there are no carriage returns in the nameless lines, then it is very easy:

Lines <- readLines(textConnection("a_ID            =    259412258      494776
      a_SID            =     2081
      a_cor       =          434
      a_FAT          =        25000       50000       75000      100000       125000      150000      175000      200000      225000      250000      275000      300000      325000      350000      375000      400000      425000      450000      475000      500000      525000      550000      575000      600000      625000      650000      675000      700000     725000      750000      775000      800000      825000      850000     875000      900000      925000      950000      975000
      a_loc                 =   2147483647  2147483647   -73356703   -73355202      -73353701   -73352130   -73350632   -73349210   -73347648   -73346229
      a_soc                  =   2147483647  2147483647   272263158   272261759      272260359   272258876   272257473   272256153   272254668   272253346") )

slines <- strsplit(Lines, "=")

List <- vector("list", length(Lines))
install.packages('gdata')
names(List) <- gdata::trim(sapply(slines,"[", 1))
sapply(seq_along(List) , 
      function(items) List[[items]] <<- 
                      scan(textConnection(slines[[items]][2]) ) )

#--------------------------------
 List
$a_ID
[1] 259412258    494776

$a_SID
[1] 2081

$a_cor
[1] 434

$a_FAT
 [1]  25000  50000  75000 100000 125000 150000 175000 200000 225000 250000 275000 300000 325000 350000 375000
[16] 400000 425000 450000 475000 500000 525000 550000 575000 600000 625000 650000 675000 700000 725000 750000
[31] 775000 800000 825000 850000 875000 900000 925000 950000 975000

$a_loc
 [1] 2147483647 2147483647  -73356703  -73355202  -73353701  -73352130  -73350632  -73349210  -73347648
[10]  -73346229

$a_soc
 [1] 2147483647 2147483647  272263158  272261759  272260359  272258876  272257473  272256153  272254668
[10]  272253346
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thanks! I have the similar problem with Ananda's solution. The data comes in multiple lines as shown in the above example. –  Arihant Aug 25 '13 at 4:59
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