DocumentCode
41807
Title
Instance-Level Constraint-Based Semisupervised Learning With Imposed Space-Partitioning
Author
Raghuram, Jayaram ; Miller, David J. ; Kesidis, George
Author_Institution
Dept. of Electr. Eng., Pennsylvania State Univ., University Park, PA, USA
Volume
25
Issue
8
fYear
2014
fDate
Aug. 2014
Firstpage
1520
Lastpage
1537
Abstract
A new method for semisupervised learning from pairwise sample (must- and cannot-link) constraints is introduced. It addresses an important limitation of many existing methods, whose solutions do not achieve effective propagation of the constraint information to unconstrained samples. We overcome this limitation by constraining the solution to comport with a smooth (soft) class partition of the feature space, which necessarily entails constraint propagation and generalization to unconstrained samples. This is achieved via a parameterized mean-field approximation to the posterior distribution over component assignments, with the parameterization chosen to match the representation power of the chosen (generative) mixture density family. Unlike many existing methods, our method flexibly models classes using a variable number of components, which allows it to learn complex class boundaries. Also, unlike most of the methods, ours estimates the number of latent classes present in the data. Experiments on synthetic data and data sets from the UC Irvine machine learning repository show that, overall, our method achieves significant improvements in classification performance compared with the existing methods.
Keywords
learning (artificial intelligence); pattern classification; UC Irvine machine learning repository; cannot-link constraints; constraint information; data sets; imposed space-partitioning; instance-level constraint-based semisupervised learning; learn complex class boundaries; must-link constraints; parameterized mean-field approximation; posterior distribution; smooth class partition; soft class partition; synthetic data; Approximation methods; Data models; Estimation; Linear programming; Measurement; Semisupervised learning; Constraint propagation; instance-level constraints; pairwise sample constraints; semisupervised learning; space-partitioning; space-partitioning.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2294459
Filename
6695785
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