I have over 100 survey data files with the following filename structure in a common directory:
BD-1994.rdta BD-1996.rdta BD-1999.rdta BD-2004.rdta BF-1992.rdta ... UG-1988.rdta UG-1995.rdta UG-2001.rdta VN-1992.rdta VN-1997.rdta
The leading two letters (eg "BD") represent a specific country (by its ISO code) and the four digits represent the year of a given survey.
I would like to process these data so I can create one multi-line, time-series graph of fertility rates per country where each line represents a year of the survey. For example, the first graph will be for "BD" (Bangladesh) and will display four time-series for years 1994, 1996, 1999, and 2004.
The structure of the individual files is as follows:
time fertility 1 3.2 2 2.6 ... ... 7 2.4
My idea at the moment is to use rbind within a for loop and create one massive dataset with all the data in it. Then I need to split the data neatly by country code, perhaps using a function like "subset" (but doesn't look like subset is the right tool for the job.
Any suggestions on how to perform this data management so I can then call the plot function in R on a dataframe that contains the survey data for all years within a given country?