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An objective framework for evaluating unrecognized bias in medical AI models predicting COVID-19 outcomes
32
Zitationen
7
Autoren
2022
Jahr
Abstract
Only a holistic evaluation, a diligent search for unrecognized bias, can provide enough information for an unbiased judgment of AI bias that can invigorate follow-up investigations on identifying the underlying roots of bias and ultimately make a change.
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