CORREL
Updated: 15 January 2011
Use the aggregate CORREL function to calculate the correlation coefficient between two datasets. The equation for the correlation coefficient is
Syntax
SELECT [wctStatistics].[wct].[CORREL] (
<@fmtCORREL, nvarchar(4000),>)
The syntax has changed as of release 1.07 and the function has changed from a scalar to an aggregate. Please make the appropriate changes when you upgrade to 1.07.
Arguments
@fmtCORREL
An nvarchar string formatted by the fmtCORREL function containing the known-y and known-x values to be used by the CORREL calculation.
Return Types
float
Remarks
· CORREL is an AGGREGATE function and follows the same conventions as all other AGGREGATE functions in SQL Server.
· CORREL is a one-pass solution. For a two-pass solution, use the CORREL_q function.
Examples
In this example, we calculate the slope for a single set of x- and y-values
SELECT wct.CORREL(wct.fmtCORREL(y, x)) as CORREL
FROM (
SELECT 0.75, 1 UNION ALL
SELECT 2.5, 2 UNION ALL
SELECT 6.75, 3 UNION ALL
SELECT 10, 4
) n(x,y)
This produces the following result
CORREL
----------------------
0.988719187867937
(1 row(s) affected)
In this example, we will populate some temporary table with some historical financial information and then calculate the slope. First, create the table and put some data in it:
CREATE TABLE #c(
SYM NVARCHAR(5),
YE BIGINT,
REV FLOAT,
GPROF FLOAT,
OPINC FLOAT,
NETINC FLOAT
)
INSERT INTO #c VALUES('YHOO',2009,6460.32,3588.57,386.69,597.99)
INSERT INTO #c VALUES('YHOO',2008,72.5,4185.14,12.96,418.92)
INSERT INTO #c VALUES('YHOO',2007,6969.27,4130.52,695.41,639.16)
INSERT INTO #c VALUES('YHOO',2006,6425.68,3749.96,940.97,751.39)
INSERT INTO #c VALUES('YHOO',2005,5257.67,3161.47,1107.73,1896.23)
INSERT INTO #c VALUES('GOOG',2009,23650.56,14806.45,8312.19,6520.45)
INSERT INTO #c VALUES('GOOG',2008,21795.55,13174.04,5537.21,4226.86)
INSERT INTO #c VALUES('GOOG',2007,16593.99,9944.9,54.44,4203.72)
INSERT INTO #c VALUES('GOOG',2006,10604.92,6379.89,3550,3077.45)
INSERT INTO #c VALUES('GOOG',2005,6138.56,3561.47,2017.28,1465.4)
INSERT INTO #c VALUES('MSFT',2010,62484,509,24167,18760)
INSERT INTO #c VALUES('MSFT',2009,58437,46282,21225,14569)
INSERT INTO #c VALUES('MSFT',2008,60420,48822,22271,17681)
INSERT INTO #c VALUES('MSFT',2007,51122,40429,18438,14065)
INSERT INTO #c VALUES('MSFT',2006,44282,36632,16064,12599)
INSERT INTO #c VALUES('ORCL',2010,26820,21056,9062,6135)
INSERT INTO #c VALUES('ORCL',2009,23252,18458,8321,5593)
INSERT INTO #c VALUES('ORCL',2008,22430,17449,7844,5521)
INSERT INTO #c VALUES('ORCL',2007,17996,13805,5974,4274)
INSERT INTO #c VALUES('ORCL',2006,14380,11145,4736,3381)
INSERT INTO #c VALUES('SAP',2009,10672,6980,2588,1748)
INSERT INTO #c VALUES('SAP',2008,11575,7370,2701,1847)
INSERT INTO #c VALUES('SAP',2007,10256,6631,2698,1906)
INSERT INTO #c VALUES('SAP',2006,9393,6064,2578,1871)
INSERT INTO #c VALUES('SAP',2005,8509,5460,2337,1496)
Now, calculate the correlation of the revenue (REV) againt the year (YE) for each company (SYM)
SELECT #c.SYM
,wct.CORREL(wct.fmtCORREL(REV,YE)) as CORREL
FROM #c
GROUP BY SYM
This produces the following result.
SYM CORREL
----- ----------------------
GOOG 0.988604792733014
MSFT 0.91861026921264
ORCL 0.983795721235544
SAP 0.873067973316442
YHOO -0.219384585146667
(5 row(s) affected)
Let’s say we wanted to perform the same analysis as above, but we only want to return the results where the correlation is positive.
SELECT #c.SYM
,wct.CORREL(wct.fmtCORREL(REV,YE)) as CORREL
FROM #c
GROUP BY SYM
HAVING wct.CORREL(wct.fmtCORREL(REV,YE)) > 0
This produces the following result.
SYM CORREL
----- ----------------------
GOOG 0.988604792733014
MSFT 0.91861026921264
ORCL 0.983795721235544
SAP 0.873067973316442
(4 row(s) affected)
In this example, we will calculate the correlation of the operating income (OPINC) against the revenue (REV)
SELECT #c.SYM
,wct.CORREL(wct.fmtCORREL(OPINC,REV)) as CORREL
FROM #c
GROUP BY SYM
This produces the following result.
SYM CORREL
----- ----------------------
GOOG 0.651906713868849
MSFT 0.987612258172035
ORCL 0.9924157389967
SAP 0.844595495520328
YHOO 0.677389856742323
(5 row(s) affected)