Opens a connection to a PIRLS data file and
returns an edsurvey.data.frame with
information about the file and data.
readPIRLS(path, countries, forceReread = FALSE, verbose = TRUE)a character value to the full directory to the PIRLS extracted SPSS (.sav) set of data
a character vector of the country/countries to include using
the three-digit ISO country code.
A list of country codes can be found on Wikipedia at
https://en.wikipedia.org/wiki/ISO_3166-1#Current_codes,
or other online sources. Consult the PIRLS User Guide to help determine what countries
are included within a specific testing year of PIRLS.
To select all countries, use a wildcard value of *.
a logical value to force rereading of all processed data.
The default value of FALSE will speed up the readPIRLS function by
using existing read-in data already processed.
a logical value to either print or suppress status message output.
The default value is TRUE.
an edsurvey.data.frame for a single specified country or an edsurvey.data.frame.list if multiple countries specified
Reads in the unzipped files downloaded from the PIRLS international database(s) using the IEA Study Data Repository. Data files require the SPSS data file (.sav) format using the default filenames.
A PIRLS edsurvey.data.frame includes three distinct data levels:
student
school
teacher
When the getData function is called using a PIRLS edsurvey.data.frame,
the requested data variables are inspected, and it handles any necessary data merges automatically.
Note that the school data will always be returned merged to the student
data, even if only school variables are requested.
Only if teacher variables are requested by the getData call, will cause teacher data to be merged.
Many students can be linked to many teachers, which varies widely between countries.
Please note that calling the dim function for a PIRLS edsurvey.data.frame will result in
the row count as if the teacher dataset was merged.
This row count will be considered the full data N of the edsurvey.data.frame, even if no teacher data were included in an analysis.
The column count returned by dim will be the count of unique column variables across all three data levels.
readNAEP, readTIMSS, getData, and downloadPIRLS
# NOT RUN {
nor <- readPIRLS("C:/PIRLS2011", countries = c("nor"))
gg <- getData(nor, c("itsex", "totwgt", "rrea"))
head(gg)
edsurveyTable(rrea ~ itsex, nor)
# }
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