A Method for Inferring Label Sampling Mechanisms in Semi-Supervised Learning
Rosset, Saharon, Zhu, Ji, Zou, Hui, Hastie, Trevor J.
–Neural Information Processing Systems
We consider the situation in semi-supervised learning, where the "label sampling" mechanism stochastically depends on the true response (as well as potentially on the features). We suggest a method of moments for estimating this stochastic dependence using the unlabeled data. This is potentially useful for two distinct purposes: a. As an input to a supervised learning procedure which can be used to "de-bias" its results using labeled data only and b.
Neural Information Processing Systems
Dec-31-2005