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How to create, structure, maintain and update data codebooks in R?

开发者 https://www.devze.com 2023-02-17 12:45 出处:网络
In the interest of replication I like to keep a codebook with meta data for each data frame. A data codebook is:

In the interest of replication I like to keep a codebook with meta data for each data frame. A data codebook is:

a written or computerized list that provides a clear and comprehensive description of the variables that will be included in the database. Marczyk et al (2010)

I like to document the following attributes of a variable:

  • name
  • description (label, format, scale, etc)
  • source (e.g. World bank)
  • source media (url and date accessed, CD and ISBN, or whatever)
  • file name of the source data on disk (helps when merging codebooks)
  • notes

For example, this is what I am implementing to document the variables in data frame mydata1 with 8 variables:

code.book.mydata1 <- data.frame(variable.name=c(names(mydata1)),
     label=c("Label 1",
              "State name",
              "Personal identifier",
              "Income per capita, thousand of US$, constant year 2000 prices",
              "Unique id",
              "Calendar year",
              "blah",
              "bah"),
      source=rep("unknown",length(mydata1)),
      source_media=rep("unknown",length(mydata1)),
      filename = rep("unknown",length(mydata1)),
      notes = rep("unknown",length(mydata1))
)

I write a different codebook for each data set I read.开发者_高级运维 When I merge data frames I will also merge the relevant aspects of their associated codebook, to document the final database. I do this by essentially copy pasting the code above and changing the arguments.


You could add any special attribute to any R object with the attr function. E.g.:

x <- cars
attr(x,"source") <- "Ezekiel, M. (1930) _Methods of Correlation Analysis_.  Wiley."

And see the given attribute in the structure of the object:

> str(x)
'data.frame':   50 obs. of  2 variables:
 $ speed: num  4 4 7 7 8 9 10 10 10 11 ...
 $ dist : num  2 10 4 22 16 10 18 26 34 17 ...
 - attr(*, "source")= chr "Ezekiel, M. (1930) _Methods of Correlation Analysis_.  Wiley."

And could also load the specified attribute with the same attr function:

> attr(x, "source")
[1] "Ezekiel, M. (1930) _Methods of Correlation Analysis_.  Wiley."

If you only add new cases to your data frame, the given attribute will not be affected (see: str(rbind(x,x)) while altering the structure will erease the given attributes (see: str(cbind(x,x))).


UPDATE: based on comments

If you want to list all non-standard attributes, check the following:

setdiff(names(attributes(x)),c("names","row.names","class"))

This will list all non-standard attributes (standard are: names, row.names, class in data frames).

Based on that, you could write a short function to list all non-standard attributes and also the values. The following does work, though not in a neat way... You could improve it and make up a function :)

First, define the uniqe (=non standard) attributes:

uniqueattrs <- setdiff(names(attributes(x)),c("names","row.names","class"))

And make a matrix which will hold the names and values:

attribs <- matrix(0,0,2)

Loop through the non-standard attributes and save in the matrix the names and values:

for (i in 1:length(uniqueattrs)) {
    attribs <- rbind(attribs, c(uniqueattrs[i], attr(x,uniqueattrs[i])))
}

Convert the matrix to a data frame and name the columns:

attribs <- as.data.frame(attribs)
names(attribs) <- c('name', 'value')

And save in any format, eg.:

write.csv(attribs, 'foo.csv')

To your question about the variable labels, check the read.spss function from package foreign, as it does exactly what you need: saves the value labels in the attrs section. The main idea is that an attr could be a data frame or other object, so you do not need to make a unique "attr" for every variable, but make only one (e.g. named to "varable labels") and save all information there. You could call like: attr(x, "variable.labels")['foo'] where 'foo' stands for the required variable name. But check the function cited above and also the imported data frames' attributes for more details.

I hope these could help you to write the required functions in a lot neater way than I tried above! :)


A more advanced version would be to use S4 classes. For example, in bioconductor the ExpressionSet is used to store microarray data with its associated experimental meta data.

The MIAME object described in Section 4.4, looks very similar to what you are after:

experimentData <- new("MIAME", name = "Pierre Fermat",
          lab = "Francis Galton Lab", contact = "pfermat@lab.not.exist",
          title = "Smoking-Cancer Experiment", abstract = "An example ExpressionSet",
          url = "www.lab.not.exist", other = list(notes = "Created from text files"))


The comment() function might be useful here. It can set and query a comment attribute on an object, but has the advantage other normal attributes of not being printed.

dat <- data.frame(A = 1:5, B = 1:5, C = 1:5)
comment(dat$A) <- "Label 1"
comment(dat$B) <- "Label 2"
comment(dat$C) <- "Label 3"
comment(dat) <- "data source is, sampled on 1-Jan-2011"

which gives:

> dat
  A B C
1 1 1 1
2 2 2 2
3 3 3 3
4 4 4 4
5 5 5 5
> dat$A
[1] 1 2 3 4 5
> comment(dat$A)
[1] "Label 1"
> comment(dat)
[1] "data source is, sampled on 1-Jan-2011"

Example of merging:

> dat2 <- data.frame(D = 1:5)
> comment(dat2$D) <- "Label 4"
> dat3 <- cbind(dat, dat2)
> comment(dat3$D)
[1] "Label 4"

but that looses the comment on dat():

> comment(dat3)
NULL

so those sorts of operations would need handling explicitly. To truly do what you want, you'll probably either need to write special versions of functions you use that maintain the comments/metadata during extraction/merge operations. Alternatively you might want to look into producing your own classes of objects - say as a list with a data frame and other components holding the metadata. Then write methods for the functions you want that preserve the meta data.

An example along these lines is the zoo package which generates a list object for a time series with extra components holding the ordering and time/date info etc, but still works like a normal object from point of view of subsetting etc because the authors have provided methods for functions like [ etc.


As of 2020, there are R packages directly dedicated to codebooks that may fit your needs.

  • The codebooks package is a comprehensive package that can generate codebooks (with common attributes plus descriptive statistics) in different formats. It has a website and a paper (Arslan, 2019, How to Automatically Document Data With the codebook Package to Facilitate Data Reuse. The paper has, in Figure 1, also a comparison of different approaches.
    Here is an example.

  • The dataspice package (featured by rOpenSci) is particularly dedicated to generating metadata that can be found by search engines on the web. It has a website.
    Here is an example.

  • The dataMaid package can generate a report containing metadata and descriptive statistics, and it can perform certain checks. It's on CRAN and GitHub, and it has a JSS paper (Petersen & Ekstrøm, 2019, dataMaid: Your Assistant for Documenting Supervised Data Quality Screening in R).
    Here is an example.

  • The memisc package has a lot of functionality for working with survey data and also comes with a codebook function. It has a website.
    Here is an example.

  • There is also a blog post by Marta Kołczyńska with a lightweight function that generates a data frame with metadata (which can be exported, e.g., to an Excel file).
    Here is an example.


How I do this is a little different and markedly less technical. I generally follow the guiding principle that if text is not designed to be meaningful to the computer and only meaningful to humans, then it belongs in comments in the source code.

This may feel rather "low tech" but there are some good reasons to do this:

  • When someone else picks up your code in the future, it is intuitive that the comments are unambiguously intended for them to read. Parameters set in unusual places within data structures may not be obvious to the future user.
  • Keeping track of parameters set inside of abstract objects requires a fair bit of discipline. Creating code comments requires discipline as well, but the absence of the comment is immediately obvious. If descriptions are being carried along as part of the object, glancing at the code does not make this obvious. The code then becomes less "literate" in the "literate programming" sense of the word.
  • Carrying descriptions of the data inside the data object can easily result in descriptions that are incorrect. This can happen if, for example, a column containing a measurement in kg is multiplied by 2.2 to convert the units to pounds. It would be very easy to overlook the need to update the metadata.

Obviously there are some real advantages to carrying metadata along with the objects. And if your workflow makes the above points less germane, then it may make a lot of sense to create a metadata attachment to your data structure. My intent was only to share some reasons why a "lower tech" comment based approach might be considered.

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