AI RESEARCH

Learning from Similarity/Dissimilarity and Pairwise Comparison

arXiv CS.LG

ArXi:2603.19713v1 Announce Type: new This paper addresses binary classification in scenarios where obtaining explicit instance level labels is impractical, by exploiting multiple weak labels defined on instance pairs. The existing SconfConfDiff classification framework relies on continuous valued probabilistic supervision, including similarity-confidence, the probability of class agreement, and confidence-difference, the difference in positive class probabilities. However, probabilistic labeling requires subjective uncertainty quantification, often leading to unstable supervision.