# Oracle SQL: Most efficient way to calculate Z-score of grouped data

I have two tables: DATA

DATA_ID  |  SAMPLE_ID  |  ASSAY_ID  |  SIGNAL
101      |  201        |  301       |  2.87964
102      |  201        |  302       |  7.64623
103      |  202        |  301       |  1.98473
...

And SAMPLES:

SAMPLE_ID  |  SAMPLE_NAME  |  CATEGORY
201        |  SAMP0001     |  CAT A
202        |  SAMP0002     |  CAT B
203        |  SAMP0003     |  CAT A
...

There are about 20,000 rows in SAMPLES. For each sample, there are about 40,000 rows in DATA. Each ASSAY_ID occurs exactly once per sample in DATA. I need to take a subset of the samples in SAMPLE and calculate a standard/z-score value for each signal value in DATA, grouping by ASSAY_ID. I am trying to create a stored procedure that will be called repeatedly, which will accept a single ASSAY_ID value and return SAMPLE_ID and ZSCORE pairs for all of the samples in the predefined sample subset.

Given a set of sample signal values (X = [3.21, 4.56, 1.12, ..]) for a given assay, the standard/z-score in this case is calculated as

(X[i] - median(X))/(K * MAD)

Where K is a scale factor equal to 1.4826 and MAD is the median adjusted deviation, equal to:

median(|X[i]-median(X)|)

Got that? Good :) Now, what is the most efficient way to perform this calculation using a SQL query? Execution time is key, given that there are close to a billion rows in DATA and a z-score needs to be calculated for almost every SIGNAL value.

Here is the best query I have been able to come up with so far:

WITH BASE AS (
SELECT
S.SAMPLE_ID,
D.SIGNAL
FROM
DATA D
JOIN SAMPLES S
ON D.SAMPLE_ID = S.SAMPLE_ID
WHERE
S.CATEGORY IN ('CAT A', 'CAT B')
AND D.ASSAY_ID = 12345
AND S.SAMPLE_NAME NOT IN ('SAMP0003', 'SAMP0005', 'SAMP0008')
)
SELECT
A.SAMPLE_ID,
FROM
BASE A,
(
SELECT MEDIAN(X.SIGNAL) AS MED
FROM BASE X
) B,
(
SELECT MEDIAN(ABS(Y.SIGNAL-YY.MED)) AS MAD
FROM BASE Y,
(SELECT MEDIAN(SIGNAL) AS MED FROM BASE) YY
) C

Is there a more efficient way to perform this query?

Bonus Question: Can I write a single SQL query that would perform this calculation for EVERY ASSAY_ID in a single execution?

-

Can you have a look at:

SELECT ASSAY_ID, SAMPLE_ID,
(SIGNAL - MED)/(1.4826F * MAD) AS ZSCORE
FROM (
SELECT ASSAY_ID, SAMPLE_ID, SIGNAL, MED,
MEDIAN(ABS(SIGNAL - MED)) OVER (PARTITION BY ASSAY_ID) AS MAD
FROM (
SELECT ASSAY_ID, SAMPLE_ID, SIGNAL,
MEDIAN(SIGNAL) OVER (PARTITION BY ASSAY_ID) AS MED
FROM DATA    D
JOIN SAMPLES S USING (SAMPLE_ID)
WHERE S.CATEGORY IN ('CAT A', 'CAT B')
AND S.SAMPLE_NAME NOT IN ('SAMP0003', 'SAMP0005', 'SAMP0008')
AND D.ASSAY_ID = 301
)
);

Is it correct? Is it faster? If it is, just remove the AND D.ASSAY_ID = 301 clause for the bonus question :-)

On the physical side, I would look into the data type for signal (BINARY_FLOAT or BINARY_DOUBLE are supposedly faster than NUMBER). And, if this is an option, I'd try to physically collocate the assays with partitions.

-
Thanks, I'll give this a try when I get in to work tomorrow! Assuming that this is faster, why would it be? – woemler Jan 11 '13 at 0:06
Without proper data I'm guessing a lot, but it looks like the WITH approach materializes the base query into a temporary table that gets fully scanned four times. The analytic function approach seems to get away with a single full scan of the table DATA. – wolφi Jan 11 '13 at 0:14
Some quick tests indicate that this version of the query is slightly faster, and the query plan shows a small decrease in cost. Also importantly, this is cleaner code and a good answer to the bonus question. Thanks! – woemler Jan 11 '13 at 16:16