# Linear regression on XTS time series matrix in R

I'm trying to do a linear regression on a XTS matrix in R but can't manage to do it right. Since I am working with multiple data sets with timestamps, I got the advice to try to use XTS to manage the data. After transforming the data into into an XTS form and merging two data sets, I am trying to do a regression analysis on them. The thing is that the regression takes noticeably longer than when working with normal data frames and when I look at the output, every value of S1 is given it's own estimate. I added a small part of the output below to visualize it:

``````Time series regression with "zoo" data:
Start = 2012-10-24 08:47:00, End = 2012-10-24 23:25:00

Call:
dynlm(formula = SG ~ S1, data = p003)

Residuals:
Min     1Q Median     3Q    Max
-2.667 -0.165  0.000  0.150  2.600

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)  1.400e+01  9.679e-01  14.464  < 2e-16 ***
S1 631.0    -2.000e-01  1.369e+00  -0.146 0.883904
S1 652.5     2.000e-01  1.369e+00   0.146 0.883904
S1 675.0    -4.000e-01  1.369e+00  -0.292 0.770262
S1 740.5     2.100e+00  1.369e+00   1.534 0.125756
...........
``````

The data continues for every value of S1 after this. I Think it is because i'm doing a regression on Matrix but I'm not sure.

Can anyone help me?

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I think that the problem is the following: After turning my data into XTS, numeric data is turned into character data. –  Hemmik Dec 18 '12 at 11:01
xts and zoo objects are matrices with an index attribute. You can't mix types with a matrix like you can with a data.frame, so your entire matrix will be converted to character if you have one character/factor column in your data.frame. –  Joshua Ulrich Dec 18 '12 at 13:02
Can you provide a reproducible example? –  Joshua Ulrich Dec 19 '12 at 17:34