How can I calculate and plot a confidence interval for my regression in r? So far I have two numerical vectors of equal length (x,y) and a regression object(lm.out). I have made a scatterplot of y given x and added the regression line to this plot. I am looking for a way to add a 95% prediction confidence band for lm.out to the plot. I've tried using the predict function, but I don't even know where to start with that :/. Here is my code at the moment:
x=c(1,2,3,4,5,6,7,8,9,0) y=c(13,28,43,35,96,84,101,110,108,13) lm.out <- lm(y ~ x) plot(x,y) regression.data = summary(lm.out) #save regression summary as variable names(regression.data) #get names so we can index this data a= regression.data$coefficients["(Intercept)","Estimate"] #grab values b= regression.data$coefficients["x","Estimate"] abline(a,b) #add the regression line
Edit: I've taken a look at the proposed duplicate and can't quite get to the bottom of it.