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Using Ensemble Decisions and Active Selection to Improve Low-Cost Labeling for Multi-View DataThis paper seeks to improve low-cost labeling in terms of training set reliability (the fraction of correctly labeled training items) and test set performance for multi-view learning methods. Co-training is a popular multiview learning method that combines high-confidence example selection with low-cost (self) labeling. However, co-training with certain base learning algorithms significantly reduces training set reliability, causing an associated drop in prediction accuracy. We propose the use of ensemble labeling to improve reliability in such cases. We also discuss and show promising results on combining low-cost ensemble labeling with active (low-confidence) example selection. We unify these example selection and labeling strategies under collaborative learning, a family of techniques for multi-view learning that we are developing for distributed, sensor-network environments.
Document ID
20120013778
Acquisition Source
Jet Propulsion Laboratory
Document Type
Conference Paper
External Source(s)
Authors
Rebbapragada, Umaa
(Jet Propulsion Lab., California Inst. of Tech. Pasadena, CA, United States)
Wagstaff, Kiri L.
(Jet Propulsion Lab., California Inst. of Tech. Pasadena, CA, United States)
Date Acquired
August 26, 2013
Publication Date
July 2, 2011
Subject Category
Statistics And Probability
Meeting Information
Meeting: 28th International Conference on Machine Learning
Location: Bellevue, WA
Country: United States
Start Date: July 2, 2011
Funding Number(s)
CONTRACT_GRANT: NSF IIS-070568
Distribution Limits
Public
Copyright
Other
Keywords
machine learning
supervised learning
multi-view data

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