A general agnostic active learning algorithm
Dasgupta, Sanjoy, Hsu, Daniel J., Monteleoni, Claire
–Neural Information Processing Systems
We present an agnostic active learning algorithm for any hypothesis class of bounded VC dimension under arbitrary data distributions. Most previous work on active learning either makes strong distributional assumptions, or else is computationally prohibitive. Our algorithm extends the simple scheme of Cohn, Atlas, and Ladner [1] to the agnostic setting, using reductions to supervised learning that harness generalization bounds in a simple but subtle manner. We provide a fallback guarantee that bounds the algorithm's label complexity by the agnostic PAC sample complexity.
Neural Information Processing Systems
Dec-31-2008