March 22, 2022, 3:49 p.m. |

News on Artificial Intelligence and Machine Learning techxplore.com

Significant advances in artificial intelligence (AI) over the past decade have relied upon extensive training of algorithms using massive, open-source databases. But when such datasets are used "off label" and applied in unintended ways, the results are subject to machine learning bias that compromises the integrity of the AI algorithm, according to a new study by researchers at the University of California, Berkeley, and the University of Texas at Austin.

ai ai algorithms algorithms bias bias in ai computer sciences databases imaging study

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