Extract regression coefficient values

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 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 it in a scalar to perform a logical test?

Alternatively, can it be worked out using another method?

• .@John - Why did you use `Pr(>|t|)` value of `a2` and not any one of the first three columns? Commented Aug 4, 2017 at 21:33

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.

• How can we "discover" these properties of the `summary`? How did you find/know this? Commented May 20, 2018 at 1:48
• You mean e.g. `coef(summary(mg))[, c("t value","Pr(>|t|)")]`? But thanks for the Link - I always forget that! Commented Aug 23, 2018 at 9:43
• @javadba, you can `str(mg)` or `names(mg)`, for instance. Commented Dec 19, 2018 at 10:57
• @PatrickT thx. These little things are what make a big difference. I found out about `data.table` and that transformed my outlook on R .. but still need these kinds of tips. Commented Dec 19, 2018 at 14:34

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
``````
• To answer the OP from this: `td[1, "estimate"]` or `td[td\$term == "(Intercept)","estimate"]` or even `tdt <- as.data.table(td); setkey(tdt); tdt["(Intercept)","estimate"]` Commented Sep 26, 2017 at 20:46

Just pass your regression model into the following function:

``````    plot_coeffs <- function(mlr_model) {
coeffs <- coefficients(mlr_model)
mp <- barplot(coeffs, col="#3F97D0", xaxt='n', main="Regression Coefficients")
lablist <- names(coeffs)
text(mp, par("usr")[3], labels = lablist, srt = 45, adj = c(1.1,1.1), xpd = TRUE, cex=0.6)
}
``````

Use as follows:

``````model <- lm(Petal.Width ~ ., data = iris)

plot_coeffs(model)
``````

• I've plundered your code and find it to be useful. You may want to alter it so that it removes na values and it allows for the main title to be entered from the function. Commented Nov 12, 2019 at 10:48

To answer your question, you can explore the contents of the model's output by saving the model as a variable and clicking on it in the environment window. You can then click around to see what it contains and what is stored where.

Another way is to type `yourmodelname\$` and select the components of the model one by one to see what each contains. When you get to `yourmodelname\$coefficients`, you will see all of beta-, p, and t- values you desire.