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README.md
ML for Beginners
Fairness in Machine Learning
[Illustration “black box” here]
Pre-lecture quiz
Introduction
You are about to learn machine learning to make our lives better— your future systems and models may be going to be involved in the everyday decision-making, such as health care system or fraud detection. So, it is important that they work well in providing fair outcomes for everyone.
Imagine when the data you are using disproportionally represented, or lacks certain demographics, such as race, gender, political view, religion, etc. Or when the output is interpreted to favor some demographic. What is the consequence of the application?
In this lesson, you will:
- Raise your awareness of importance of fairness in ML
- Learn about fairness-related harms
- Learn about unfairness assessment and mitigation
Prerequisite
There is no prerequisite for this lesson, but it is a good idea to finish reading the Introduction to Machine Learning](https://github.com/microsoft/ML-For-Beginners/tree/main/Introduction/1-intro-to-ML) and [History of Machine Learning](../2-history-of-ML/README.md) first.
Unfairness in data and algorithms
"If you torture the data long enough, it will confess to anything." - Ronald Coase This sounds extreme but it is true that data can be manipulated to support any conclusion. And manipulation can happen unintentionally. As humans, we all have bias, and you just don’t consciously know when you introduce bias in data. Fairness in AI and machine learning remains a complex sociotechnical challenge, meaning that it cannot be addressed from either purely social or technical perspectives. Watch this video to learn about the fairness and socio-technical challenges:


