

Regression to the Wrong Answer
Passage
•
AI Literacy
•
9th - 12th Grade
•
Practice Problem
•
Easy
Rhianna O'Rand
Used 1+ times
FREE Resource
6 questions
Show all answers
1.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
A new candidate has 6 years of experience and graduated from a top-ranked college. Based only on the data above, would you predict they get hired?
Yes
No
Can't tell from the data
2.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
Model B has a higher R² than Model A. What does this tell us?
Model B is better and should be used for hiring decisions
Model B makes more accurate predictions based on its training data, but accuracy alone doesn't make a model fair or appropriate
Model B is broken and needs to be fixed
R² doesn't matter — only fairness matters
3.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
Amazon's AI hiring tool gave lower scores to résumés that mentioned women's organizations. What best explains why?
The AI was programmed by engineers who were biased against women
The AI learned from historical hiring data in which men were hired more often, so it associated male-coded signals with success
The AI made a random error that happened to disadvantage women
Women's organizations are less impressive than men's organizations
4.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
A company removes "gender" from their hiring model's input data to make it fairer. A researcher points out this may not fully solve the problem. Why?
Because fairness and accuracy cannot both be achieved at the same time
Because gender is actually important for predicting job performance
Because other variables in the dataset, like college attended or job title, may still correlate with gender, allowing the model to use gender indirectly
Because removing variables always makes models less accurate
5.
MULTIPLE CHOICE QUESTION
30 sec • 1 pt
Which of the following best describes the main argument of this passage?
AI models should not be used for hiring decisions under any circumstances
Bias in AI is always the result of intentional decisions by engineers
The solution to algorithmic bias is to use more data
A mathematically accurate model can still produce unfair outcomes if it is trained on biased historical data
6.
OPEN ENDED QUESTION
3 mins • 1 pt
In your own words, explain why a model trained on biased data might be described as "laundering" bias through math. What makes this different from, or similar to, human bias?
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