Importance weighted active learning 论文
2009引用 289
Machine Learning and AlgorithmsAlgorithms and Data CompressionMachine Learning and Data Classification
摘要
We present a practical and statistically consistent scheme for actively learning binary classifiers under general loss functions. Our algorithm uses importance weighting to correct sampling bias, and by controlling the variance, we are able to give rigorous label complexity bounds for the learning process.