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The following piece of code is supposed to load and prepare datasets from a specified directory for further data analysis. The problem is that the code generates the following errors during attempts to merge data (one for each merging option). I'm confused about what is going on here. However, my gut feeling tells me that the errors might be due to the absence of column names in some data frames. I would appreciate a clarification. Also, please advise on the preferred merging option (between #1 and #2). Thank you!

UPDATE 2 (Reworked with minimal reproducible example, previous versions removed):

Current error (Merging Option 1 enabled):

Error in fix.by(by.x, x) : 'by' must specify a uniquely valid column

Current error (Merging Option 2 enabled):

Error in `[.data.frame`(x, rep.int(NA_integer_, nyy), nm.x, drop = FALSE) : undefined columns selected

Required Packages: none, other than standard ones.

Source Code (includes reproducible data):

# load the datasets of transformed data

# real data
#dataSets <- loadDataSets(SRDA_DIR)

# reproducible example data
# (generated via `dput(lapply(dataSets, head))`, thanks to @MrFlick)

dataSets <- list(structure(list(`NA` = c("284", "284", "284", "284", "284", 
"284"), `NA` = c("490", "490", "490", "490", "490", "490")), .Names = c(NA_character_, 
NA_character_), SQL = structure("ClNFTEVDVCBnLmdyb3VwX2lkLCB1LnVzZXJfaWQKRlJPTSBzZjA1MTQuZ3JvdXBzIGcsIHNmMDUxNC51c2VycyB1LCBzZjA1MTQucHJvamVjdF9oaXN0b3J5IHBoLCBzZjA1MTQucHJvamVjdF90YXNrIHB0LCBzZjA1MTQucHJvamVjdF9ncm91cF9saXN0IHBnbApXSEVSRSBwaC5wcm9qZWN0X3Rhc2tfaWQgPSBwdC5wcm9qZWN0X3Rhc2tfaWQKQU5EIHB0Lmdyb3VwX3Byb2plY3RfaWQgPSBwZ2wuZ3JvdXBfcHJvamVjdF9pZApBTkQgZy5ncm91cF9pZCA9IHBnbC5ncm91cF9pZApBTkQgcGgubW9kX2J5ID0gdS51c2VyX2lk", class = "base64"), indicatorName = structure("Y29udHJpYlBlb3BsZQ==", class = "base64"), resultNames = structure("TkE=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`Project ID` = c("85684", 
"172552", "228484", "173865", "94140", "179097"), Enabled = c("1", 
"1", "1", "1", "1", "1"), `Repo URL` = c("http://svn.tr51.org/svn/variomat/trunk/", 
"http://svn.hyperic.org/?root=Hyperic+SIGAR", "http://code.google.com/p/ufolder/source/browse", 
"https://svn.canoo.com/trunk/webtestclipse/", "http://www.rasilon.net/svn/sptools/trunk/sptools", 
"http://trac.pocoo.org/repos/pygments"), `Repo Instructions` = c("Login is currently disabled.", 
"For anonymous access, simply issue the command 'svn co http://svn.hyperic.org/projects/sigar'  For developer access, send email to sourceforge user &quot;hyperic&quot;.", 
"Anonymous browsing", "https://svn.canoo.com/trunk/webtestclipse/", 
"SVN stuff to go here.  If you just want a copy of the source, run svn co http://www.rasilon.net/svn/sptools/trunk/sptools", 
"The Subversion repository is at http://trac.pocoo.org/repos/pygments."
)), .Names = c("Project ID", "Enabled", "Repo URL", "Repo Instructions"
), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgZW5hYmxlZCwgdXJsX3ByaW1hcnksIGluc3RydWN0aW9uc19wdWJsaWMKRlJPTSBzZjA1MTQuZXh0ZXJuYWxfdG9vbF9saW5rcw==", class = "base64"), indicatorName = structure("ZGV2TGlua3M=", class = "base64"), resultNames = structure("UHJvamVjdCBJRCwgRW5hYmxlZCwgUmVwbyBVUkwsIFJlcG8gSW5zdHJ1Y3Rpb25z", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`NA` = c("1343228", 
"230959", "1938195", "1883362", "404683", "650286"), `NA` = c("6", 
"6", "6", "6", "6", "6"), `NA` = c("http://sourceforge.net/p/aprpg/discussion", 
"http://sourceforge.net/project/memberlist.php?group_id=230959", 
"http://www.polishavenue.com", "http://sourceforge.net/p/wakemypc/tickets", 
"http://sourceforge.net/apps/trac/graphz/", "http://testando1"
)), .Names = c(NA_character_, NA_character_, NA_character_), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgcHJlZmVycmVkX3N1cHBvcnRfdHlwZSwgcHJlZmVycmVkX3N1cHBvcnRfcmVzb3VyY2UKRlJPTSBzZjA1MTQuZ3JvdXBzCldIRVJFIHByZWZlcnJlZF9zdXBwb3J0X3R5cGUgPSA2", class = "base64"), indicatorName = structure("ZGV2U3VwcG9ydA==", class = "base64"), resultNames = structure("TkE=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`Project ID` = c("1692507", 
"1095949", "685064", "900864", "976917", "1949934"), `Development Team Size` = c(1, 
1, 1, 1, 1, 1)), .Names = c("Project ID", "Development Team Size"
), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgQ09VTlQodXNlcl9pZCkKRlJPTSBzZjA1MTQudXNlcl9ncm91cApXSEVSRSBncmFudGN2cyA9IDEKR1JPVVAgQlkgZ3JvdXBfaWQ=", class = "base64"), indicatorName = structure("ZGV2VGVhbVNpemU=", class = "base64"), resultNames = structure("UHJvamVjdCBJRCwgRGV2ZWxvcG1lbnQgVGVhbSBTaXpl", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`NA` = c("1844416", 
"1849571", "1850512", "1850521", "1854556", "1855148"), `NA` = c("0", 
"0", "0", "0", "0", "0"), `NA` = c("1", "1", "1", "1", "1", "1"
)), .Names = c(NA_character_, NA_character_, NA_character_), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgdXNlX3dpa2ksIHVzZV9mb3J1bQpGUk9NIHNmMDUxNC5ncm91cHM=", class = "base64"), indicatorName = structure("ZG1Qcm9jZXNz", class = "base64"), resultNames = structure("TkE=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`Project ID` = c("2107960", 
"2068039", "2156229", "2068032", "2068046", "2081469"), `Project Age` = c(5, 
6.5, 4, 6.5, 6.5, 6)), .Names = c("Project ID", "Project Age"
), row.names = c(NA, 6L), class = "data.frame"), structure(list(
    `Project ID` = c("708994", "1586967", "581072", "738614", 
    "758081", "782990"), `Project License` = structure(c(1L, 
    1L, 1L, 1L, 1L, 1L), .Label = c("", "afl", "apache", "apache2", 
    "artistic", "boostlicense", "bsd", "cddl", "eclipselicense", 
    "educom", "fair", "gpl", "ibm", "ibmcpl", "iosl", "jabber", 
    "lgpl", "mit", "mpl", "mpl11", "ms-rl", "nasalicense", "ncsa", 
    "nethack", "none", "nposl3", "osl", "other", "php", "php-license", 
    "psfl", "public", "publicdomain", "python", "qpl", "sissl", 
    "sunpublic", "website", "wxwindows", "zlib", "zope"), class = "factor"), 
    `License Restrictiveness` = structure(c(NA_integer_, NA_integer_, 
    NA_integer_, NA_integer_, NA_integer_, NA_integer_), .Label = c("Highly Restrictive", 
    "Permissive", "Restrictive", "Unknown"), class = "factor")), .Names = c("Project ID", 
"Project License", "License Restrictiveness"), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgbGljZW5zZQpGUk9NIHNmMDUxNC5ncm91cHM=", class = "base64"), indicatorName = structure("cHJqTGljZW5zZQ==", class = "base64"), resultNames = structure("UHJvamVjdCBJRCwgUHJvamVjdCBMaWNlbnNl", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`Project ID` = c("2", 
"3", "7", "11", "12", "14"), `Latest Release` = c("Snapshots", 
"7.5", "gedit 0.9.5", "r2-00", "0.9.7", "dhiggen_merge-5.0"), 
    `Project Maturity` = structure(c(NA, 3L, 1L, 3L, 1L, 3L), .Label = c("Alpha/Beta", 
    "Stable", "Mature"), class = "factor")), .Names = c("Project ID", 
"Latest Release", "Project Maturity"), SQL = structure("ClNFTEVDVCBmcC5ncm91cF9pZCwgTUFYKGZyLm5hbWUpCkZST00gc2YwNTE0LmZyc19wYWNrYWdlIGZwLCBzZjA1MTQuZnJzX3JlbGVhc2UgZnIsIHNmMDUxNC5mcnNfc3RhdHVzIGZzCldIRVJFIGZwLnBhY2thZ2VfaWQgPSBmci5wYWNrYWdlX2lkCkdST1VQIEJZIGZwLmdyb3VwX2lk", class = "base64"), indicatorName = structure("cHJqTWF0dXJpdHk=", class = "base64"), resultNames = structure("UHJvamVjdCBJRCwgTGF0ZXN0IFJlbGVhc2U=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`NA` = c("1660372", 
"1590394", "1590772", "85777", "1591062", "1591181"), `NA` = c("0", 
"0", "0", "0", "0", "0")), .Names = c(NA_character_, NA_character_
), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgdXNlX3dpa2kKRlJPTSBzZjA1MTQuZ3JvdXBz", class = "base64"), indicatorName = structure("cHViUm9hZG1hcA==", class = "base64"), resultNames = structure("TkE=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(ID = c("141", "66", 
"55", "45", "75", "80"), `Software Type` = c("Clustering", "Database", 
"Desktop", "Development", "Financial", "Games")), .Names = c("ID", 
"Software Type"), SQL = structure("ClNFTEVDVCB0cm92ZV9jYXRfaWQsIGRlc2NyaXB0aW9uCkZST00gc2YwNTE0LnRyb3ZlX2Zyb250cGFnZQ==", class = "base64"), indicatorName = structure("c29mdHdhcmVUeXBl", class = "base64"), resultNames = structure("SUQsIFNvZnR3YXJlIFR5cGU=", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"), structure(list(`Project ID` = c("142", 
"129", "120", "119", "107", "106"), `User Community Size` = c("153237", 
"3299", "135710", "16249", "6042", "2508")), .Names = c("Project ID", 
"User Community Size"), SQL = structure("ClNFTEVDVCBncm91cF9pZCwgZG93bmxvYWRzCkZST00gc2YwNTE0LnN0YXRzX3Byb2plY3RfYWxs", class = "base64"), indicatorName = structure("dXNlckNvbW11bml0eVNpemU=", class = "base64"), resultNames = structure("UHJvamVjdCBJRCwgVXNlciBDb21tdW5pdHkgU2l6ZQ==", class = "base64"), row.names = c(NA, 
6L), class = "data.frame"))

# Merging Option 1

flossData <- data.frame(dataSets[[1]][1])

# merge all loaded datasets by common column ("Project ID")
silent <- lapply(seq(2, length(dataSets) - 1),
                 function(i) {merge(flossData, dataSets[[1]][i],
                                    by = "Project ID",
                                    all.y = TRUE)})

# Merging Option 2

#flossData <- Reduce(function(...) 
#  merge(..., by.x = "row.names", by.y = "Project ID", all = TRUE),
#  dataSets)

# Additional Transformations

# convert presence of Repo URL to integer
flossData[["Repo URL"]] <- as.integer(flossData[["Repo URL"]] != "")

# convert License Restrictiveness' factor levels to integers
#flossData[["License Restrictiveness"]] <- 
#  as.integer(flossData[["License Restrictiveness"]])

# convert User Community Size from character to integer
flossData[["User Community Size"]] <- 
  as.integer(flossData[["User Community Size"]])

# remove NAs
#flossData <- flossData[complete.cases(flossData[,3]),]
rowsNA <- apply(flossData, 1, function(x) {any(is.na(x))})
flossData <- flossData[!rowsNA,]

Environment:

> sessionInfo()
R version 3.1.1 (2014-07-10)
Platform: x86_64-pc-linux-gnu (64-bit)

locale:
 [1] LC_CTYPE=en_US.UTF-8 LC_NUMERIC=C         LC_TIME=C           
 [4] LC_COLLATE=C         LC_MONETARY=C        LC_MESSAGES=C       
 [7] LC_PAPER=C           LC_NAME=C            LC_ADDRESS=C        
[10] LC_TELEPHONE=C       LC_MEASUREMENT=C     LC_IDENTIFICATION=C 

attached base packages:
[1] stats     graphics  grDevices utils     datasets  methods   base     

other attached packages:
[1] plspm_0.4.1   turner_0.1.7  tester_0.1.7  diagram_1.6.2 shape_1.4.1   amap_0.8-12  

loaded via a namespace (and not attached):
[1] tools_3.1.1

UPDATE 3:

An attempt to merge data frames, using reshape package (reshape::merge_all(dataSets)), resulted in the following error message: Error: cannot allocate vector of size 332.8 Gb. This is quite strange, considering that the total size of R objects stored in that directory and being merged is only 4.3 MB.

An attempt to merge data fames, using plyr package (plyr::join_all(dataSets)), resulted in the following error message: Error in ``[.data.frame``(x, by) : undefined columns selected. This seems to match the error message in the Merging Option 2.

share|improve this question
2  
you're attempting to merge dataSets[i] with nothing –  rawr Aug 3 at 4:01
1  
Yeah, so did I---probably should have done that first. Looks like merge() will not work when one of the data frames is empty. Seems like poor design by the authors to me. Better use an if() to isolate the initial case and just return the table instead of merging if NROWS(flossData)==0. –  farnsy Aug 3 at 4:41
2  
if you have a list of data sets, Reduce(function(...) merge(..., by = 'Project ID', all = TRUE), dataSets) should work, just dont use the empty one. Or use a merge function for multiple data sets, something like join_all from plyr (but you may need to use list2env to make each an object in your workspace) –  rawr Aug 3 at 10:55
3  
it's hard to tell without the data you are working with. The error effectively says you are mtcars[ , NA] trying to select an NA column in your data. Does the code break at Reduce if you run it line-by-line? Reduce works left to right, so the first data is merged (by row.names) with the second (by project ID), then that resulting data is merged (by row.names) with the third (by project ID), and so on. Would that cause errors? –  rawr Aug 3 at 15:54
2  
youre probably getting downvotes because you haven't provided a reproducible example so that we can run your code, get your errors, and see what's going wrong. As of now, we can only speculate, and that's not an efficient way to debug code. –  rawr Aug 3 at 15:56

1 Answer 1

up vote 2 down vote accepted
lapply(dataSets, names)
pids = which(sapply(dataSets, FUN=function(x) { 'Project ID' %in% names(x) }))

acc = dataSets[[pids[1]]]

for (id in pids[2:length(pids)]) {
  acc = merge(acc, dataSets[[id]], by='Project ID', all=T)
}

Assumptions I had to make:

  • not all data sets from dataSet have Project ID column, so assumed you need to join only those which have it. So first I find them and put their indexes to pids
  • since there are data sets that don't have any project ids in common, I assumed you want to perform outer join - all=T flag in merge

Regarding your question about what way of joining to use, I'd say it's not a good idea to do this in R. I'd use an RDBMS whenever possible to do joins and other things before loading data to R

share|improve this answer
    
Thank you, Alexey! I have already fixed my import procedure to make sure most datasets have Project ID column. Regardless of that, your code is nice and useful (should I need to merge with datasets lacking that column). In regard to using a DB server to perform most operations, I understand that, but I do it that way for two reasons: 1) DB server for one of the main data sources is very slow, so any more than trivial operations make it crawl; 2) based on the nature of my research, I want to have a freedom to decide when and what data to analyze. Again, thank you for help. Upvoting. –  Aleksandr Blekh Aug 6 at 8:15
    
Hmm... Strange thing - when testing, your code generates an error message Error in which(sapply(dataSets, FUN = function(x) {: argument to 'which' is not logical. The code looks fine to me. Am I missing something? (dataSets is a list of data frames) –  Aleksandr Blekh Aug 6 at 9:19
    
With the provided data it generates no error. Could there, in dataSets, be something that is not a data frame? –  Alexey Grigorev Aug 6 at 15:50
    
Thanks, I will check that. –  Aleksandr Blekh Aug 6 at 20:44
    
Just tested. You're right, the code works fine with my minimal reproducible example. I will have to figure out the issues or specifics in my real data that generate the error. –  Aleksandr Blekh Aug 6 at 21:41

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