# Extract regression coefficient values in R

I have a regression model for some time series data investigating drug utilisation. The purpose is to fit a spline to a time series and work out 95% CI etc. The model goes as follows:

``````id<-ts(1:length(drug\$Date))
a1<-ts(drug\$Rate)
a2<-lag(a1-1)
tg<-ts.union(a1,id,a2)
mg<-lm(a1~a2+bs(id,df=df1),data=tg)
``````

The summary output of mg is:

``````Call:
lm(formula = a1 ~ a2 + bs(id, df = df1), data = tg)

Residuals:
Min       1Q   Median       3Q      Max
-0.31617 -0.11711 -0.02897  0.12330  0.40442

Coefficients:
Estimate Std. Error t value Pr(>|t|)
(Intercept)        0.77443    0.09011   8.594 1.10e-11 ***
a2                 0.13270    0.13593   0.976  0.33329
bs(id, df = df1)1 -0.16349    0.23431  -0.698  0.48832
bs(id, df = df1)2  0.63013    0.19362   3.254  0.00196 **
bs(id, df = df1)3  0.33859    0.14399   2.351  0.02238 *
---
Signif. codes:  0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1
``````

I am using to the Pr(>|t|) value of a2 to test if the data under investigation are autocorrelated.

Is it possible to extract this value of Pr(>|t|), in this model 0.33329 and store in a scalar to perform a logical test.

Alternatively, can it be worked out using another method.

Many thanks.

-

A `summary.lm` object stores these values in a `matrix` called `'coefficients'`. So the value you are after can be accessed with:

``````a2Pval <- summary(mg)\$coefficients[2, 4]
``````

Or, more generally/readably, `coef(summary(mg))["a2","Pr(>|t|)"]`. See here for why this method is preferred.

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nice. I was all over the place extracting different elements from the summary and did not manage to get this. Your help is very much appreciated. –  John Jul 5 '11 at 1:12

The package `broom` comes in handy here (it uses the "tidy" format).

`tidy(mg)` will give a nicely formated data.frame with coefficients, t statistics etc. Works also for other models (e.g. plm, ...).

Example from `broom`'s github repo:

``````lmfit <- lm(mpg ~ wt, mtcars)
require(broom)
tidy(lmfit)

term estimate std.error statistic   p.value
1 (Intercept)   37.285   1.8776    19.858 8.242e-19
2          wt   -5.344   0.5591    -9.559 1.294e-10

is.data.frame(tidy(lmfit))
[1] TRUE
``````
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Please show an example and use proper punctuation and capitalization in your answer. –  Thomas Apr 7 at 9:41