Improving the Applicability of AI for Psychiatric Applications through Human-in-the-loop Methodologies.
Chelsea ChandlerPeter W FoltzBrita ElvevågPublished in: Schizophrenia bulletin (2022)
Human-in-the-loop ML is an approach to data collection and model creation that harnesses active learning to select the most critical data needed to increase a model's accuracy and generalizability more efficiently than classic random sampling would otherwise allow. Such techniques may additionally operate as safeguards from spurious predictions and can aid in decreasing disparities that artificial intelligence systems otherwise propagate.