Feb. 16, 2024, 3:02 a.m. | Muhammad Athar Ganaie

MarkTechPost www.marktechpost.com

AI aims for accurate and efficient learning. Traditional approaches have largely centered on models learning from correct examples. However, a groundbreaking study shifts this paradigm by suggesting that models can significantly benefit from an in-depth analysis of their mistakes. The study introduces Learning from Errors and Principles (LEAP), a novel methodology that deliberately incorporates mistakes […]


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