
- HOW TO CALCULATE STANDARD ERROR OF A REGRESSION HOW TO
- HOW TO CALCULATE STANDARD ERROR OF A REGRESSION CODE
Don’t hesitate to let me know in the comments section, in case you have further questions.
HOW TO CALCULATE STANDARD ERROR OF A REGRESSION HOW TO
In summary: At this point you should know how to return linear regression stats such as standard errors or p-values in R programming.
HOW TO CALCULATE STANDARD ERROR OF A REGRESSION CODE
In the video, I explain the R code of this tutorial in a live session.īesides the video, you may have a look at the other tutorials of this homepage: Note that this p-value is basically zero in this example.ĭo you want to learn more about linear regression analysis? Then you may have a look at the following video of my YouTube channel. Pf(mod_summary$fstatistic, # Applying pf() function Pf (mod_summary$fstatistic, # Applying pf() function Let’s fit a linear regression model based on these data in R:


The variable y is our target variable and the variables x1-圆 are the predictors. # 6 1.74 1.68 1.61 -0.63 -3.16 -0.21 0.31Īs you can see based on the previous RStudio console output, our example data is a data frame containing seven columns. Head(data) # Showing head of example data Set.seed(1234421234) # Drawing randomly distributed data

seed ( 1234421234 ) # Drawing randomly distributed data
