Exam AAIR Topic 1 Question 51 Discussion
Actual exam question for ISACA's AAIR exam
Question #: 51
Topic #: 1
Question #: 51
Topic #: 1
An election oversight body is considering the use of AI to identify irregularities in voting patterns. Which of the following is the MOST important risk to evaluate?
Suggested Answer: B Vote an answer
AI systems trained on historical data inherit the biases, patterns, and structural inequities embedded in that data. In electoral contexts, historical voting patterns may reflect systemic disenfranchisement, gerrymandering, or demographic manipulation-biases that an AI system could amplify and legitimize through its outputs.
Why B is Correct: According to ISACA AAIR bias and fairness guidance applied to high-stakes public sector AI, the amplification of historical data biases poses the greatest risk in electoral irregularity detection. If the AI system treats historically suppressed voting patterns as the normal baseline, it may flag legitimate turnout increases in previously underrepresented communities as irregularities-producing discriminatory, biased outputs with severe democratic consequences.
Why A is Wrong: Voter location identification is a privacy concern but represents a specific data element risk.
Comprehensive privacy controls can mitigate location exposure without resolving the systemic bias risk.
Why C is Wrong: Contextual drift-the model performing differently in new electoral contexts than in training contexts-is a technical risk that is relevant but addressable through validation testing. Bias amplification is a more fundamental concern embedded in the historical data itself.
Why D is Wrong: Political distrust of AI represents a stakeholder acceptance challenge. While significant for implementation success, it is a communication and change management concern rather than the primary technical and ethical risk from the AI system itself.
Why B is Correct: According to ISACA AAIR bias and fairness guidance applied to high-stakes public sector AI, the amplification of historical data biases poses the greatest risk in electoral irregularity detection. If the AI system treats historically suppressed voting patterns as the normal baseline, it may flag legitimate turnout increases in previously underrepresented communities as irregularities-producing discriminatory, biased outputs with severe democratic consequences.
Why A is Wrong: Voter location identification is a privacy concern but represents a specific data element risk.
Comprehensive privacy controls can mitigate location exposure without resolving the systemic bias risk.
Why C is Wrong: Contextual drift-the model performing differently in new electoral contexts than in training contexts-is a technical risk that is relevant but addressable through validation testing. Bias amplification is a more fundamental concern embedded in the historical data itself.
Why D is Wrong: Political distrust of AI represents a stakeholder acceptance challenge. While significant for implementation success, it is a communication and change management concern rather than the primary technical and ethical risk from the AI system itself.
by Ahern at Jun 17, 2026, 10:31 PM
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