Dear all,
I have an unbalanced panel data for a number of countries on the percentage of youth not in education, employment and training % (neet). The neet variable for each country and year is reported by sex (male, female, total). So, for any country at any given year, neet is reported for males, females and for both sexes (tot). I would like to produce a table that gives for each country the values of neet (male, female, total) for the most recent year , which is not the same for all the countries. I have tried the following code, which gives the results only sequentially, i.e. one sex category at a time. As I am sure there is a more efficient way of doing that. I would appreciate any suggestion in that regard. I am using Stata 14.2.
Here is a chunk of the data. N.B. The original variable referring to years is a string variable (time) that needs to be encoded.
I have an unbalanced panel data for a number of countries on the percentage of youth not in education, employment and training % (neet). The neet variable for each country and year is reported by sex (male, female, total). So, for any country at any given year, neet is reported for males, females and for both sexes (tot). I would like to produce a table that gives for each country the values of neet (male, female, total) for the most recent year , which is not the same for all the countries. I have tried the following code, which gives the results only sequentially, i.e. one sex category at a time. As I am sure there is a more efficient way of doing that. I would appreciate any suggestion in that regard. I am using Stata 14.2.
Code:
drop if missing(neet) local var tot male female foreach x of local var { preserve keep if sex == "`x'" bysort country (year) : keep if _n == _N bys country (year) : egen `x'_neet = total(cond(sex == "`x'", neet, .)) // retaining neet for specific sex local arneet "`arneet' `x'_neet" list country year `x'_neet restore }
Code:
* Example generated by -dataex-. To install: ssc install dataex clear input str3 ccode str33 country str6 sex str4 time double neet long year "DZA" "Algeria" "tot" "2009" 25.45 34 "DZA" "Algeria" "male" "2009" 11.23 34 "DZA" "Algeria" "female" "2009" 39.93 34 "DZA" "Algeria" "tot" "2010" 24.53 35 "DZA" "Algeria" "male" "2010" 10.76 35 "DZA" "Algeria" "female" "2010" 39.06 35 "DZA" "Algeria" "tot" "2011" 26 36 "DZA" "Algeria" "male" "2011" 15 36 "DZA" "Algeria" "female" "2011" 37.4 36 "DZA" "Algeria" "tot" "2012" 22.7 37 "DZA" "Algeria" "male" "2012" 10.8 37 "DZA" "Algeria" "female" "2012" 34.8 37 "DZA" "Algeria" "tot" "2013" 21.5 38 "DZA" "Algeria" "male" "2013" 8.8 38 "DZA" "Algeria" "female" "2013" 34.6 38 "DZA" "Algeria" "tot" "2014" 22.8 39 "DZA" "Algeria" "male" "2014" 11.4 39 "DZA" "Algeria" "female" "2014" 34.7 39 "DZA" "Algeria" "tot" "2015" 21.2 40 "DZA" "Algeria" "male" "2015" 10.8 40 "DZA" "Algeria" "female" "2015" 32.1 40 "DZA" "Algeria" "tot" "2017" 20.95 42 "DZA" "Algeria" "male" "2017" 10.94 42 "DZA" "Algeria" "female" "2017" 31.69 42 "COM" "Comoros" "tot" "2004" 27.89 29 "COM" "Comoros" "male" "2004" 22.73 29 "COM" "Comoros" "female" "2004" 32.61 29 "COM" "Comoros" "tot" "2014" 27.58 39 "COM" "Comoros" "male" "2014" 21.35 39 "COM" "Comoros" "female" "2014" 33.13 39 "DJI" "Djibouti" "tot" "2017" 19.32 42 "DJI" "Djibouti" "male" "2017" 14.51 42 "DJI" "Djibouti" "female" "2017" 24.05 42 "EGY" "Egypt" "tot" "2008" 29.66 33 "EGY" "Egypt" "male" "2008" 15.68 33 "EGY" "Egypt" "female" "2008" 46.93 33 "EGY" "Egypt" "tot" "2009" 29.9 34 "EGY" "Egypt" "male" "2009" 16.2 34 "EGY" "Egypt" "female" "2009" 47.01 34 "EGY" "Egypt" "tot" "2010" 33.08 35 "EGY" "Egypt" "male" "2010" 15.8 35 "EGY" "Egypt" "female" "2010" 52.01 35 "EGY" "Egypt" "tot" "2011" 32.1 36 "EGY" "Egypt" "male" "2011" 17.95 36 "EGY" "Egypt" "female" "2011" 48.47 36 "EGY" "Egypt" "tot" "2012" 31.55 37 "EGY" "Egypt" "male" "2012" 19.61 37 "EGY" "Egypt" "female" "2012" 45.67 37 "EGY" "Egypt" "tot" "2013" 28.4 38 "EGY" "Egypt" "male" "2013" 17.92 38 "EGY" "Egypt" "female" "2013" 41.11 38 "EGY" "Egypt" "tot" "2015" 27.61 40 "EGY" "Egypt" "male" "2015" 19.76 40 "EGY" "Egypt" "female" "2015" 35.81 40 "EGY" "Egypt" "tot" "2016" 27.61 41 "EGY" "Egypt" "male" "2016" 19.88 41 "EGY" "Egypt" "female" "2016" 35.69 41 "EGY" "Egypt" "tot" "2017" 26.9 42 "EGY" "Egypt" "male" "2017" 19.58 42 "EGY" "Egypt" "female" "2017" 35 42 "EGY" "Egypt" "tot" "2018" 27.09 43 "EGY" "Egypt" "male" "2018" 18.6 43 "EGY" "Egypt" "female" "2018" 36.6 43 "EGY" "Egypt" "tot" "2019" 27.96 44 "EGY" "Egypt" "male" "2019" 16.44 44 "EGY" "Egypt" "female" "2019" 40.34 44 "EGY" "Egypt" "tot" "2020" 30.19 45 "EGY" "Egypt" "male" "2020" 17.2 45 "EGY" "Egypt" "female" "2020" 43.97 45
Comment