Creating AI that’s fair and accurate: Framework moves beyond binary decisions to offer a more nuanced approach

Two of the trickiest qualities to balance in the world of machine learning are fairness and accuracy. Algorithms optimized for accuracy may unintentionally perpetuate bias against specific groups, while those prioritizing fairness may compromise accuracy by misclassifying some data points.

This post was originally published on this site

Skip The Dishes Referral Code

KeyLegal.ca - Consult a Lawyer Online in a variety of legal subjects