We've got some data containing two variables, where x is the predictor and y is the response variable. We make a model of the form of: y=alpha+beta⋅x+epsilon Then we see that in the residual plot (residuals vs. y) the variance is increasing as y. We then decide to transform our model to a logarithmic form, i.e.: log(y)=alpha+beta⋅x+epsilon. When performing a residual plot analysis, do we plot residuals vs. log(y) or y?

sarahkobearab4

sarahkobearab4

Open question

2022-08-16

We've got some data containing two variables, where x is the predictor and y is the response variable. We make a model of the form of:
y = α + β x + ϵ
Then we see that in the residual plot (residuals vs. y ^ ) the variance is increasing as y ^ . We then decide to transform our model to a logarithmic form, i.e.:
l o g ( y ) = α + β x + ϵ
When performing a residual plot analysis, do we plot residuals vs. l o g ( y ) ^ or y ^ ?

Answer & Explanation

Jaydan Gilbert

Jaydan Gilbert

Beginner2022-08-17Added 16 answers

You should plot them against the log ( y ) as these are the residuals that need to be tested for the logarithmic form
orkesruim40

orkesruim40

Beginner2022-08-18Added 3 answers

Residuals are differences between what is what is observed and what is predicted by the regression equation. So if you're regressing log(y) on x, then you'd use predicted and observed log(y) to find the residuals.

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