Multiple Choice
An automobile finance company analyzed a sample of recent automobile loans to try to determine key factors in identifying borrowers who would be likely to default on their auto loan. The response variable Default equals 1 if the borrower defaulted during the term of the loan and 0 otherwise. The predictor variable AutoDebt% was the ratio (expressed as a percent) of the required loan payments to the borrower's take-home income at the time of purchase. JobTime was the number of years the borrower had worked at their current job at the time of purchase. CredScore was the borrower's credit score at the time of purchase. Below is part of the classification tree the finance company derived from the data collected in the study. Assume they classify those with a default probability estimate of at least .5 as Defaulters. Based on this classification tree, a member of the study sample who had a credit score of 423, been at their current job for 4 years, took out a loan with payments equaling 22% of their income, and did not default would be
A) inaccurately classified as a Defaulter.
B) inaccurately classified as a non-Defaulter.
C) accurately classified as a Defaulter.
D) accurately classified as a non-Defaulter.
Correct Answer:

Verified
Correct Answer:
Verified
Q88: A regression tree is used for predicting
Q89: An MBA admissions officer wishes to predict
Q90: An MBA admissions officer wishes to predict
Q91: The optimal value of k to use
Q92: An internet service provider (ISP) has randomly
Q94: Which of the following would you find
Q95: Suppose that a bank wishes to predict
Q96: An MBA admissions officer wishes to predict
Q97: An automobile finance company analyzed a sample
Q98: The k-nearest neighbors approach can be used