DocumentCode :
1496539
Title :
Linear Dimensionality Reduction for Margin-Based Classification: High-Dimensional Data and Sensor Networks
Author :
Varshney, Kush R. ; Willsky, Alan S.
Author_Institution :
Lab. for Inf. & Decision Syst., Massachusetts Inst. of Technol., Cambridge, MA, USA
Volume :
59
Issue :
6
fYear :
2011
fDate :
6/1/2011 12:00:00 AM
Firstpage :
2496
Lastpage :
2512
Abstract :
Low-dimensional statistics of measurements play an important role in detection problems, including those encountered in sensor networks. In this work, we focus on learning low-dimensional linear statistics of high-dimensional measurement data along with decision rules defined in the low-dimensional space in the case when the probability density of the measurements and class labels is not given, but a training set of samples from this distribution is given. We pose a joint optimization problem for linear dimensionality reduction and margin-based classification, and develop a coordinate descent algorithm on the Stiefel manifold for its solution. Although the coordinate descent is not guaranteed to find the globally optimal solution, crucially, its alternating structure enables us to extend it for sensor networks with a message-passing approach requiring little communication. Linear dimensionality reduction prevents overfitting when learning from finite training data. In the sensor network setting, dimensionality reduction not only prevents overfitting, but also reduces power consumption due to communication. The learned reduced-dimensional space and decision rule is shown to be consistent and its Rademacher complexity is characterized. Experimental results are presented for a variety of datasets, including those from existing sensor networks, demonstrating the potential of our methodology in comparison with other dimensionality reduction approaches.
Keywords :
message passing; statistical analysis; wireless sensor networks; Rademacher complexity; coordinate descent; high-dimensional data; joint optimization problem; linear dimensionality reduction; low-dimensional linear statistics; margin-based classification; message passing; sensor networks; Acoustic measurements; Complexity theory; Joints; Manifolds; Optimization; Principal component analysis; Training; Linear dimensionality reduction; Stiefel manifold; sensor networks; supervised classification;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2011.2123891
Filename :
5751706
Link To Document :
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