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I have a dataset (found here- https://netfiles.umn.edu/users/nacht001/www/nachtsheim/Kutner/Appendix%20C%20Data%20Sets/APPENC01.txt) and I have done some R coding for linear regression. In the attached dataset the columns are not labelled. I had to label the columns of the dataset and save it as a csv and I apologize I can't get that on here… but the columns I am using are column 2 (stay) column 3(age) column 4(infection) and column 12(service). I named the dataset hospital.

I am running a multiple linear regression to find the effects of age (X1), infection (X2), and service(X3) on stay (Y)

I am trying to plot the residuals against Y hat but I do not know if I am doing this correctly. I understand what a residual plot is, but I am unsure if I am supposed to add the Y hat regression line or if my code below is returning the proper plot. I also need to plot the residuals against the "two-factor interaction terms" which I am unsure how to do.

model.1<- data.frame(hospital$stay, hospital$age, hospital$infection, hospital$service)
fit.1<- lm(hospital$stay~ hospital$age + hospital$infection + hospital$service)
model.1.resid<- residuals(fit.1)
plot(fitted(fit.1), model.1.resid)
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  • well that's why I am so confused, the question asks for me to "obtain the residuals and plot them against Y hat" is that just faulty wording for obtaining a residual plot and then adding the Y hat regression line to the plot?
    – hk47
    Oct 30, 2014 at 2:23
  • Okay… also this might be strictly forbidden on this site so sorry if it is but would you be willing to like help me through this problem on a chat or something $$ I have a lot more questions
    – hk47
    Oct 30, 2014 at 2:27
  • actually, plotting residuals against fitted values is a very common procedure.
    – Ben Bolker
    Oct 30, 2014 at 2:33
  • okay well I don't even care if anyone wants to check a linear regression problem let me know I have all the coding and the work just want to see if I am doing it correctly and if my interpretation is correct.
    – hk47
    Oct 30, 2014 at 2:35
  • Have a look at library(car) qqPlot() function which provides a more accurate method of assessing normality assumption than plot() does.
    – KFB
    Oct 30, 2014 at 2:45

1 Answer 1

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You could give below a try.

library(car)
qqPlot(fit.1, labels=row.names(your_data_file), id.method="identify",
simulate=TRUE, main="Q-Q Plot")
# If you want to know more about qqPlot, please check ?qqPlot()

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