5 Reasons for Unfair Models | Proxy Variables, Unbalanced Samples & Negative Feedback Loops
A Data Odyssey A Data Odyssey
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 Published On Jul 17, 2023

Want to understand the reasons behind unfair machine learning models? We delve into the key factors that contribute to the creation of biased and unjust AI models. These are proxy variables, unbalanced samples, historical injustice in data, algorithm choice and negative feedback loops. Understanding these can help you combat biases in algorithmic decision-making.

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SHAP course: https://adataodyssey.com/courses/shap...
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Read the companion article (no-paywall link):
https://towardsdatascience.com/algori...

Other articles you may find useful:
Introduction to Algorithm Fairness: https://towardsdatascience.com/what-i...
Analysing Fairness: https://towardsdatascience.com/analys...
Correcting Fairness: https://towardsdatascience.com/approa...

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