DocumentCode :
2845400
Title :
Nonparametric Copula Density Estimation in Sensor Networks
Author :
Qu, Leming ; Chen, Hao ; Tu, Yichen
Author_Institution :
Dept. of Math., Boise State Univ., Boise, ID, USA
fYear :
2011
fDate :
16-18 Dec. 2011
Firstpage :
1
Lastpage :
8
Abstract :
Statistical and machine learning is a fundamental task in sensor networks. Real world data almost always exhibit dependence among different features. Copulas are full measures of statistical dependence among random variables. Estimating the underlying copula density function from distributed data is an important aspect of statistical learning in sensor networks. With limited communication capacities or privacy concerns, centralization of the data is often impossible. By only collecting the ranks of the data observed by different sensors, we estimate and evaluate the copula density on an equally spaced grid after binning the standardized ranks at the fusion center. Without assuming any parametric forms of copula densities, we estimate them nonparametrically by maximum penalized likelihood estimation (MPLE) method with a Total Variation (TV) penalty. Linear equality and positivity constraints arise naturally as a consequence of marginal uniform densities of any copulas. Through local quadratic approximation to the likelihood function, the constrained TV-MPLE problem is cast as a sequence of corresponding quadratic optimization problems. A fast gradient based algorithm solves the constrained TV penalized quadratic optimization problem. Numerical experiments show that our algorithm can estimate the underlying copula density accurately.
Keywords :
approximation theory; gradient methods; learning (artificial intelligence); maximum likelihood estimation; quadratic programming; statistical analysis; wireless sensor networks; communication capacity; constrained TV penalized quadratic optimization problem; constrained TV-MPLE problem; data privacy; distributed data; fusion center; gradient based algorithm; linear equality; local quadratic approximation; machine learning; marginal uniform density; maximum penalized likelihood estimation method; nonparametric copula density function estimation; positivity constraint; sensor network; standardized rank; statistical dependence; statistical learning; total variation penalty; Approximation algorithms; Estimation; Joints; Linear approximation; Random variables; TV; copula; copula density estimation; dependence; sensor network;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Mobile Ad-hoc and Sensor Networks (MSN), 2011 Seventh International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4577-2178-6
Type :
conf
DOI :
10.1109/MSN.2011.50
Filename :
6117387
Link To Document :
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