Which of the following will BEST reduce data bias in machine learning (ML) algorithms?
A.
Adopting a more simplified model
B.
Utilizing unstructured data sets
C.
Diversifying the model training data
D.
Securing the model training data
The Answer Is:
C
This question includes an explanation.
Explanation:
AAISM guidance clearly states that the most effective way to mitigate data bias is through diverse training data that fairly represents all relevant populations, scenarios, and contexts. Simplified models may reduce complexity but do not remove bias. Unstructured data sets may introduce new errors without addressing fairness. Securing training data protects confidentiality and integrity but does not resolve representational imbalance. Therefore, the best practice for reducing bias in ML is diversification of training datasets.
[References:, AAISM Study Guide – AI Risk Management (Bias and Fairness in AI), ISACA AI Security Management – Data Diversity and Representation Controls, ]
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