# Proportional sampling via SAS

I have 600,000+ observed data that I want to sample proportional to its ZIP codes (the number of ZIP codes in the data are proportional to its population density). The key variables in the data are ZIP CODE, ID, and GROUP.

I need to fix my existing SAS code so that when SAS picks a ZIP CODE, it picks all the records in its GROUP. For example, if ID=2 is selected, I need ID=1 and ID=3 as well. Thus, I have all the ZIP codes in GROUP=1.

``````ID  GROUP   ZIP
1   1   46227
2   1   46227
3   1   46227
4   2   47620
5   3   47433
6   3   47433
7   3   47433
8   4   46135
9   4   46135
10  5   46202
11  5   46202
12  5   46202
13  5   46202
14  6   46793
15  6   46793
16  7   46202
17  7   46202
18  7   46202
19  8   46409
20  8   46409
21  9   46030
22  9   46030
23  9   46030
24  10  46383
25  10  46383
26  10  46383
``````

I have the following SAS code that will sample 1000 obs from the data however it just randomly picks ZIP codes without considering the GROUP variable.

``````proc freq data=sample;
tables zip / out=outfreq noprint;
run;

data newfreq error; set outfreq;
sampnum=(percent*1000)/100;
_NSIZE_=round(sampnum, 1);
sampnum=round(sampnum, .01);
if _NSIZE_=0 then output error;
if _NSIZE_=0 then delete;
output newfreq;
run;

data newfreq2; set newfreq error;
by zip;
keep zip _NSIZE_;
run;

proc sort data=newfreq2;
by zip;
run;

proc sort data=sample;
by zip;
run;

/* proportional stratified sampling */
proc surveyselect data=sample seed=2020 out=sampout sampsize=newfreq2;
strata zip;
id id zip;
run;
``````

I hope I am explaining my problem clearly. If not, I'll try to clarify and/or elaborate on things that are unclear.

-
It looks like you want to use sampling on the groups then use a lookup to merge back on the zip codes. – Pureferret Jun 18 '13 at 19:00

Here's an attempt that seems to work.

``````data test;
input id group zip;
cards;
1 1 46227
2 1 46227
3 1 46227
4 2 47620
5 3 47433
6 3 47433
7 3 47433
8 4 46135
9 4 46135
10 5 46202
11 5 46202
12 5 46202
13 5 46202
14 6 46793
15 6 46793
16 7 46202
17 7 46202
18 7 46202
19 8 46409
20 8 46409
21 9 46030
22 9 46030
23 9 46030
24 10 46383
25 10 46383
26 10 46383
;
run;

data test;
set test;
rand = ranuni(1200);
run;

proc sort data=test;
by rand;
run;

/* 10 here is how many cases you want to sample initially */
data test;
set test;
if _n_ <= 10 then sample = 1;
else sample = 0;
run;

proc sort data=test;
by  group
descending sample;
run;

data test;
set test;
by  group;
retain keep;

if first.group and sample = 1 then keep = 1;
if first.group and sample = 0 then keep = 0;

if not first.group then keep = keep;

drop    rand
sample;

run;

proc sort data=test;
by id;
run;
``````

As a bonus, here's an R one-liner that will give the same results:

``````# 3 here is the number of cases being sampled
test[test\$group %in% (test[sample(1:nrow(test),3),]\$group),]
``````
-
This code seems to work but I don't think the sampled data are not proportional to the number of ZIP codes because I get a lot of ZIPs with low population density. – Ken Jun 20 '12 at 14:35

Not sure what you mean. Are you trying to sample ZIP codes (and return all obs for each ZIP) or do you want a sample stratified BY ZIP code (meaning N obs from each ZIP)? You might want to see Example 89.4 in the SAS/STAT User's Guide here.

-
Yeah, I am using stratified sampling method but I want to make sure that I have all ZIP from the same group once a ZIP code is sampled. – Ken Jun 20 '12 at 14:13