Computer Science – Learning
Scientific paper
2010-02-26
Computer Science
Learning
12 pages, 9 figures
Scientific paper
Semisupervised learning has emerged as a popular framework for improving modeling accuracy while controlling labeling cost. Based on an extension of stochastic composite likelihood we quantify the asymptotic accuracy of generative semi-supervised learning. In doing so, we complement distribution-free analysis by providing an alternative framework to measure the value associated with different labeling policies and resolve the fundamental question of how much data to label and in what manner. We demonstrate our approach with both simulation studies and real world experiments using naive Bayes for text classification and MRFs and CRFs for structured prediction in NLP.
Balasubramanian Krishnakumar
Dillon Joshua V.
Lebanon Guy
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