# Calculate arithmetic return from a table of values

I've created a table of index price levels (eg, S&P 500) that I'd like to calculate the daily return of. Table structure looks like this:

``````Date        Value
2009-07-02  880.167341
2009-07-03  882.235134
2009-07-06  881.338052
2009-07-07  863.731494
2009-07-08  862.458985
``````

I'd like to calculate the daily arithmetic return (ie, percentage return) of the index, defined as:

``````Daily Return = P(2)/P(1) - 1
``````

Where P represents the index value in this case. Given the input table presented above, the desired output would look like this:

``````    Date        Return
2009-07-03  0.002349318
2009-07-06  -0.001016829
2009-07-07  -0.019977077
2009-07-08  -0.001473269
``````

It occurs to me that a self join would work, but I'm not sure of the best way to increment the date on the second table to account for weekends.

-
Perfect, thanks, all! –  Chris Oct 26 '11 at 19:28

A simple CROSS APPLY

``````SELECT
Tlater.Date, (Tlater.Value / TPrev2.Value) - 1
FROM
MyTable Tlater
CROSS APPLY
(
SELECT TOP 1 TPrev.Value
FROM MyTable TPrev
WHERE TPrev.Date < Tlater.Date
ORDER BY TPrev.Date
) TPrev2
``````

Note: this becomes trivial in Denali (SQL Server 2012) with LAG (untested, may need a CTE)

``````SELECT
OrderDate,
(Value / (LAG(Value) OVER (ORDER BY Date))) -1
FROM
MyTable
``````

Or

``````;WITH cPairs AS
(
SELECT
Date,
Value AS Curr,
LAG(Value) OVER (ORDER BY Date) AS Prev
FROM
MyTable
)
SELECT
Date,
(Curr / Prev) -1
FROM
cPairs
``````
-
``````WITH cteRank AS (
SELECT [Date], Value,
ROW_NUMBER() OVER(ORDER BY [Date]) AS RowNum
FROM YourTable
)
SELECT c1.[Date], c1.Value/c2.Value - 1 as [Return]
from cteRank c1
inner join cteRank c2
on c1.RowNum - 1 = c2.RowNum
where c1.RowNum > 1
``````
-

If you're using 2005+, you can use the ROW_NUMBER function combined with a CTE:

``````;with RowNums as ( select *, row_number() over (order by date) as RN from table )
select *, r1.Value / r.Value - 1 as Return
from RowNums r
inner join RowNums r1
on r.RN = r1.RN - 1
``````
-