Noroozi, 2023 - Google Patents
Data Heterogeneity and Its Implications for FairnessNoroozi, 2023
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- 1347021843819700304
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- Noroozi G
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Data heterogeneity, referring to the differences in underlying generative processes that produce the data, presents challenges in analyzing and utilizing datasets for decision- making tasks. This thesis examines the impact of data heterogeneity on biases and fairness …
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