Active Learning for Non-Parametric Regression Using Purely Random Trees
Jack Goetz, Ambuj Tewari, Paul Zimmerman
–Neural Information Processing Systems
Active learning is the task of using labelled data to select additional points to label, with the goal of fitting the most accurate model with a fixed budget of labelled points. In binary classification active learning is known to produce faster rates than passive learning for a broad range of settings.
Neural Information Processing Systems
Feb-14-2026, 21:29:56 GMT