Maximum Margin Semi-Supervised Learning for Structured Variables
Altun, Y., McAllester, D., Belkin, M.
–Neural Information Processing Systems
Many real-world classification problems involve the prediction of multiple interdependent variables forming some structural dependency. Recent progress in machine learning has mainly focused on supervised classification of such structured variables. In this paper, we investigate structured classification in a semi-supervised setting. We present a discriminative approach that utilizes the intrinsic geometry of input patterns revealed by unlabeled data points and we derive a maximum-margin formulation of semi-supervised learning for structured variables. Unlike transductive algorithms, our formulation naturally extends to new test points.
Neural Information Processing Systems
Dec-31-2006