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I want to save the result of a lm model into a dataframe. I generated an empty dataframe (Startframe), where I want to save the results.

My dataframe containing the data is called testdata in this case. It contains the Date in the first column and then several Stations in the rest of the colums.

So far this code is working to get the Estimate, Std. Error, t value and Pr(>|t|).

for(i in 2:ncol(testdata)) {
  x <- testdata[,1]
  y <- testdata[,i]
  mod <- lm(y ~ x)
  summary(mod)

  Startframe[i,] <- c(i,
                 summary(mod)[['coefficients']]['(Intercept)','Estimate'],
                 summary(mod)[['coefficients']]['x','Estimate'],
                 summary(mod)[['coefficients']]['x','Std. Error'],
                 summary(mod)[['coefficients']]['x','t value'],
                 summary(mod)[['coefficients']]['x','Pr(>|t|)'])

But how can I also extract the r.squared?

I tried to add summary(mod)[['r.squared']] to the list, but it gives me the wrong numbers.

I know str(summary(mod)) gives me an overview, but I cant figure out how to add it into my loop.

Thanks for your help.

  • 2
    Does it have to be in a loop? Can I suggest another solution using broom package? – DJV Apr 2 at 11:05
  • I would like to have it in that loop, because I am already working successfully with it, but I am also open for other options if they are working well. – Mr.Spock Apr 2 at 11:13
  • I used in another context model <- lm(Pegel$D00 ~ Pegel$dss) and later r2 = round(summary(model)$r.squared, 2) – help-info.de Apr 2 at 11:20
  • This gives me the same wrong number than my summary(mod)[['r.squared']]. I dont know why this happens. – Mr.Spock Apr 2 at 11:22
  • Try summary(t)['r.squared']$r.squared – DJV Apr 2 at 11:28
1

Nice way to work with the same model on different datasets is to use the tidyverse approach using broom package.

In this example I'm using the diamonds dataset to test how carat and depth effects the diamonds' price in different diamond cuts.

require(tidyverse)
require(broom)

diamonds %>% 
  nest(-cut) %>% 
  mutate(model = purrr::map(data, function(x) { 
    lm(price ~ carat + depth, data = x)}), 
    values = purrr::map(model, glance), 
    r.squared = purrr::map_dbl(values, "r.squared"), 
    pvalue = purrr::map_dbl(values, "p.value")) %>% 
  select(-data, -model, -values)

 cut       r.squared pvalue
  <ord>         <dbl>  <dbl>
1 Ideal         0.867      0
2 Premium       0.856      0
3 Good          0.851      0
4 Very Good     0.859      0
5 Fair          0.746      0
  • Thanks, but I dont get how this should loop over my dataframe from colums 2-10. – Mr.Spock Apr 2 at 11:43
  • It's instead of using a loop – DJV Apr 2 at 12:30
  • Thank you! Now I got it. – Mr.Spock Apr 2 at 13:24
  • Glad I could help :) – DJV Apr 2 at 13:37

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