Multiple Choice
Imagine we were trying to predict whether someone will pass (score = 1) , or fail (score = 0) their driving test based on: (1) the number of hours of lessons they'd had; (2) whether or not they owned a car; (3) how many previous tests they had taken; and (4) their score on a test of spatial awareness. What analysis could we use on these data?
A) Multinomial logistic regression
B) Bimodal logistic regression
C) Binary logistic regression
D) Multiple regression
Correct Answer:

Verified
Correct Answer:
Verified
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