8 Fairness and mitigating bias
This chapter covers
- Identifying sources of bias in datasets
- Validating whether machine learning models are fair using various fairness notions
- Applying interpretability techniques to identify the source of discrimination in machine learning models
- Mitigating bias using preprocessing techniques
- Documenting datasets using datasheets to improve transparency and accountability and to ensure compliance with regulation
You have learned a lot so far and have added a lot of interpretability techniques to your toolkit, ranging from those that you can use to interpret model processing (chapters 2 to 5) to those for interpreting representations learned by a machine learning model (chapters 6 and 7). We will now employ some ...
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