Questions
ENVX2001 (ND) Practice quiz
Single choice
Why may we opt for the adjusted r2 instead of the multiple r2 when assessing model fit of multiple linear regression?
Options
A.Adjusted r2 takes the number of predictors into account, whereas multiple r2 increases with more predictors and gives us a false understanding of our model fit.
B.None of the answers
C.There is no difference; we could use either
D.Adjusted r2 takes the number of response variables into account, whereas multiple r2 increases with more response variables and gives us a false understanding of our model fit.
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Step-by-Step Analysis
When evaluating why one would prefer adjusted r-squared over unadjusted (multiple) r-squared in the context of multiple linear regression, it's helpful to compare what each statistic measures and how they react to model complexity.
Option A: 'Adjusted r2 takes the number of predictors into account, whereas multiple r‑2 increases with more predictors and gives us a false understanding of our model fit.' This statement highlights a key concept: unadjusted r-squared always increases (or at least does not decr......Login to view full explanationLog in for full answers
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