# Stratified random sampling with BigQuery?

How can I do stratified sampling on BigQuery?

For example, we want a 10% proportionate stratified sample using the category_id as the strata. We have up to 11000 category_ids in some of our tables.

With `#standardSQL`, let's define our table and some stats over it:

``````WITH table AS (
SELECT *, subreddit category
), table_stats AS (
SELECT *, SUM(c) OVER() total
FROM (
SELECT category, COUNT(*) c
FROM table
GROUP BY 1
HAVING c>1000000)
)
``````

In this setup:

• `subreddit` will be our category
• we only want subreddits with more than 1000000 comments

So, if we want 1% of each category in our sample:

``````SELECT COUNT(*) samples, category, ROUND(100*COUNT(*)/MAX(c),2) percentage
FROM (
SELECT id, category, c
FROM table a
JOIN table_stats b
USING(category)
WHERE RAND()< 1/100
)
GROUP BY 2
`````` Or let's say we want ~80,000 samples - but chosen proportionally through all categories:

``````SELECT COUNT(*) samples, category, ROUND(100*COUNT(*)/MAX(c),2) percentage
FROM (
SELECT id, category, c
FROM table a
JOIN table_stats b
USING(category)
WHERE RAND()< 80000/total
)
GROUP BY 2
`````` Now, if you want to get the ~same number of samples from each group (let's say, 20,000):

``````SELECT COUNT(*) samples, category, ROUND(100*COUNT(*)/MAX(c),2) percentage
FROM (
SELECT id, category, c
FROM table a
JOIN table_stats b
USING(category)
WHERE RAND()< 20000/c
)
GROUP BY 2
`````` If you want exactly 20,000 elements from each category:

``````SELECT ARRAY_LENGTH(cat_samples) samples, category, ROUND(100*ARRAY_LENGTH(cat_samples)/c,2) percentage
FROM (
SELECT ARRAY_AGG(a ORDER BY RAND() LIMIT 20000) cat_samples, category, ANY_VALUE(c) c
FROM table a
JOIN table_stats b
USING(category)
GROUP BY category
)
`````` If you want exactly 2% of each group:

``````SELECT COUNT(*) samples, sample.category, ROUND(100*COUNT(*)/ANY_VALUE(c),2) percentage
FROM (
SELECT ARRAY_AGG(a ORDER BY RAND()) cat_samples, category, ANY_VALUE(c) c
FROM table a
JOIN table_stats b
USING(category)
GROUP BY category
), UNNEST(cat_samples) sample WITH OFFSET off
WHERE off<0.02*c
GROUP BY 2
`````` If this last approach is what you want, you might notice it failing when you actually want to get data out. An early `LIMIT` similar to the largest group size will make sure we don't sort more data than needed:

``````SELECT sample.*
FROM (
SELECT ARRAY_AGG(a ORDER BY RAND() LIMIT 105000) cat_samples, category, ANY_VALUE(c) c
FROM table a
JOIN table_stats b
USING(category)
GROUP BY category
), UNNEST(cat_samples) sample WITH OFFSET off
WHERE off<0.02*c
``````

I think the simplest way to get a proportionate stratified sample is to order the data by the categories and do an "nth" sample of the data. For a 10% sample, you want every 10 rows.

This looks like:

``````select t.*
from (select t.*,
row_number() over (order by category order by rand()) as seqnum
from t
) t
where seqnum % 10 = 1;
``````

Note: This does not guarantee that all categories will be in the final sample. A category with fewer than 10 rows may not appear.

If you want equal sized samples, then order within each category and just take a fixed number:

``````select t.*
from (select t.*,
row_number() over (partition by category order by rand()) as seqnum
from t
) t
where seqnum <= 100;
``````

Note: This does not guarantee that 100 rows exist within each category. It takes all rows for smaller categories and a random sample of larger ones.

Both these methods are quite handy. They can work with multiple dimensions at the same time. The first has a particularly nice feature that it can also work with numeric dimensions as well.