# Linear Regression calculation several times in one dataframe

I am using R to evaluate climate data and I have a data set that looks like the following miniaturized version... please forgive my crude posting etiquette, I hope this post is understandable.

``````[0][STA.NAME] [YEAR] [SUM.CDD]
1 NAME1 1967    760
2 NAME1 1985    800
3 NAME1 1996    740
4 NAME1 2003    810
5 NAME1 2011    790
6 NAME2 1967    700
7 NAME2 1985    690
8 NAME2 1996    850
9 NAME2 2003    790
10 NAME3    1967    760
11 NAME3    1985    800
12 NAME3    1990    740
13 NAME3    1996    810
14 NAME3    2003    790
15 NAME3    2011    800
``````

I am trying to return a new DF with this

``````[STA.NAME] [Eq'n of trend]
NAME1  (y = mx + b)
NAME2  (y = mx + b)
``````

etc...

Eventually I will need to calculate variance of the trends, as well as total variance of data and would like to eventually append those to this resulting data set for something like...

``````[STA.NAME] [TREND] [VAR.TREND] [VAR.DATA]
with values in rows, 1 for each STA.NAME...
``````

Any help is greatly appreciated, If there is a better way than lm(), with which I am currently stumped, I would be interested as well.

Thank you very much,

Jesse

-

Here is a simple solution using `ddply()` from `plyr` to return the coefficients for each group:

First replicate the data:

``````x <- read.table(text="
STA.NAME YEAR SUM.CDD
1 NAME1 1967    760
2 NAME1 1985    800
3 NAME1 1996    740
4 NAME1 2003    810
5 NAME1 2011    790
6 NAME2 1967    700
7 NAME2 1985    690
8 NAME2 1996    850
9 NAME2 2003    790
10 NAME3    1967    760
11 NAME3    1985    800
12 NAME3    1990    740
13 NAME3    1996    810
14 NAME3    2003    790
15 NAME3    2011    800  ", header=TRUE)
``````

Now do the modelling:

``````library(plyr)
ddply(x, .(STA.NAME), function(z)coef(lm(SUM.CDD ~ YEAR, data=z)))

STA.NAME (Intercept)      YEAR
1    NAME1   -444.8361 0.6147541
2    NAME2  -6339.2047 3.5702200
3    NAME3   -995.2381 0.8928571
``````

Now, depending on what you want to do, it may be simpler (and perhaps more meaningful) to create a single model of your data:

``````fit <- lm(SUM.CDD ~ YEAR + STA.NAME, data=x)
``````

Get a summary:

``````summary(fit)

Call:
lm(formula = SUM.CDD ~ YEAR + STA.NAME, data = x)

Residuals:
Min     1Q Median     3Q    Max
-63.57 -22.21  10.72  18.62  80.72

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)   -2065.6401  1463.5353  -1.411   0.1858
YEAR              1.4282     0.7345   1.945   0.0778 .
STA.NAMENAME2   -15.8586    27.5835  -0.575   0.5769
STA.NAMENAME3     3.9046    24.7089   0.158   0.8773
---
Signif. codes:  0 ‘***’ 0.001 ‘**’ 0.01 ‘*’ 0.05 ‘.’ 0.1 ‘ ’ 1

Residual standard error: 40.8 on 11 degrees of freedom
Multiple R-squared: 0.3056, Adjusted R-squared: 0.1162
F-statistic: 1.614 on 3 and 11 DF,  p-value: 0.2424
``````

Extract only the coefficients:

``````coef(fit)
(Intercept)          YEAR STA.NAMENAME2 STA.NAMENAME3
-2065.640078      1.428247    -15.858650      3.904632
``````

Finally, you perhaps wanted to fit a model with interaction terms. This model gives you effectively the same results as the original `plyr` solution. Depending on your data and your objectives, this might be the way to do it:

``````fit <- lm(SUM.CDD ~ YEAR * STA.NAME, data=x)
summary(fit)

Call:
lm(formula = SUM.CDD ~ YEAR * STA.NAME, data = x)

Residuals:
Min      1Q  Median      3Q     Max
-57.682 -13.166  -1.012  23.006  63.046

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)         -444.8361  2280.7464  -0.195    0.850
YEAR                   0.6148     1.1447   0.537    0.604
STA.NAMENAME2      -5894.3687  3661.9795  -1.610    0.142
STA.NAMENAME3       -550.4020  3221.8390  -0.171    0.868
YEAR:STA.NAMENAME2     2.9555     1.8406   1.606    0.143
YEAR:STA.NAMENAME3     0.2781     1.6172   0.172    0.867

Residual standard error: 39.17 on 9 degrees of freedom
Multiple R-squared: 0.4763, Adjusted R-squared: 0.1854
F-statistic: 1.637 on 5 and 9 DF,  p-value: 0.2451
``````
-
Very nice layout, even by your high standards :-) . Sticking `lm` inside the `ddply` call is not only cool, but highlights the power of `plyr` tools in general. –  Carl Witthoft Feb 2 '13 at 14:39
again, Thank you very much. Very clean, I did not understand the ~ modeling syntax very well but your code makes it quite understandable. Thanks again, Jesse –  user1680636 Feb 2 '13 at 22:53
@user1680636 If this answer was helpful, please consider accepting it by clicking on the green tick mark. This indicates to others that the question was answered. –  Andrie Feb 3 '13 at 10:31
@Andrie @user1680636 This is a great answer. May I also add that one can directly get the same stratified coefficients as with the `ddply()` call, by using `coef(lm(SUM.CDD ~ STA.NAME + YEAR:STA.NAME, data=x))`. –  Theodore Lytras Mar 18 '13 at 21:35
@TheodoreLytras Yes, `a*b` is the same as `a + a:b` –  Andrie Mar 18 '13 at 22:41