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What are the fairness implications of encoding categorical protected attributes?
May 9, 2023, 3:47 p.m. | Carlos Mougan
Towards Data Science - Medium towardsdatascience.com
Exploring the Impact of Encoding Protected Attributes on Fairness in ML
We will explore the world of categorical attribute encoding and its implications for machine learning models in terms of accuracy and fairness. Categorical attributes, such as country of birth or ethnicity, play a crucial role in determining the presence of sensitive information in data. However, many machine learning algorithms struggle to directly process categorical attributes, necessitating the use of encoding methods to transform …
categorical-data ethics fairness machine learning preprocesing
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