Equalized odds
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Equalized odds, also referred to as conditional procedure accuracy equality and disparate mistreatment, is a measure of fairness in machine learning. A classifier satisfies this definition if the subjects in the protected and unprotected groups have equal true positive rate and equal false positive rate, satisfying the formula: P(R = + , Y = y, A = a) = P(R = + , Y = y, A = b) \quad y \in \ \quad \forall a,b \in A For example, A could be gender, race, or any other characteristics that we want to be free of bias, while Y would be whether the person is qualified for the degree, and the output R would be the school's decision whether to offer the person to study for the degree. In this context, higher university enrollment rates of African Americans compared to whites with similar test scores might be necessary to fulfill the condition of equalized odds, if the "base rate" of Y differs between the groups. The concept was originally defined for binary-valued Y. In 2017, Woodworth et al. generalized the concept further for multiple classes.


See also

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Fairness (machine learning) Fairness in machine learning refers to the various attempts at correcting algorithmic bias in automated decision processes based on machine learning models. Decisions made by computers after a machine-learning process may be considered unfair if ...
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Color blindness (racial classification) Color blindness is a term that has been used by justices of the United States Supreme Court in several opinions relating to racial equality and social equity, particularly in public education.Parents Involved in Community Schools v. Seattle Sch ...


References

{{reflist Machine learning Information ethics Computing and society Philosophy of artificial intelligence Discrimination Bias