Inverse Entropic Optimal Transport Solves Semi-supervised Learning via Data Likelihood Maximization
PositiveArtificial Intelligence
Inverse Entropic Optimal Transport Solves Semi-supervised Learning via Data Likelihood Maximization
A recent study introduces a novel approach to semi-supervised learning by leveraging inverse entropic optimal transport to maximize data likelihood. This method addresses the common challenge of acquiring paired data, which is often difficult in various machine learning applications, particularly in domain translation. By effectively utilizing both limited paired data and additional unpaired samples, this research could significantly enhance the efficiency and accuracy of machine learning models, making it a noteworthy advancement in the field.
— via World Pulse Now AI Editorial System
