Active Learning Ranking from Pairwise Preferences with Almost Optimal Query Complexity
–Neural Information Processing Systems
Given a set V of n elements we wish to linearly order them using pairwise preference labels which may be non-transitive (due to irrationality or arbitrary noise). The goal is to linearly order the elements while disagreeing with as few pairwise preference labels as possible. Our performance is measured by two parameters: The number of disagreements (loss) and the query complexity (number of pairwise preference labels).
Neural Information Processing Systems
Mar-15-2024, 04:59:16 GMT