TY - GEN
T1 - Online reconstruction from big data via compressive censoring
AU - Wang, Gang
AU - Berberidis, Dimitris
AU - Kekatos, Vassilis
AU - Giannakis, Georgios B.
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2014/2/5
Y1 - 2014/2/5
N2 - This is an era of data deluge with individuals and pervasive sensors acquiring large and ever-increasing amounts of data. Nevertheless, given the inherent redundancy, the costs related to data acquisition, transmission, and storage can be reduced if the per-datum importance is properly exploited. In this context, the present paper investigates sparse linear regression with censored data that appears naturally under diverse data collection setups. A practical censoring rule is proposed here for data reduction purposes. A sparsity-aware censored maximum-likelihood estimator is also developed, which fits well to big data applications. Building on recent advances in online convex optimization, a novel algorithm is finally proposed to enable real-time processing. The online algorithm applies even to the general censoring setup, while its simple closed-form updates enjoy provable convergence. Numerical simulations corroborate its effectiveness in estimating sparse signals from only a subset of exact observations, thus reducing the processing cost in big data applications.
AB - This is an era of data deluge with individuals and pervasive sensors acquiring large and ever-increasing amounts of data. Nevertheless, given the inherent redundancy, the costs related to data acquisition, transmission, and storage can be reduced if the per-datum importance is properly exploited. In this context, the present paper investigates sparse linear regression with censored data that appears naturally under diverse data collection setups. A practical censoring rule is proposed here for data reduction purposes. A sparsity-aware censored maximum-likelihood estimator is also developed, which fits well to big data applications. Building on recent advances in online convex optimization, a novel algorithm is finally proposed to enable real-time processing. The online algorithm applies even to the general censoring setup, while its simple closed-form updates enjoy provable convergence. Numerical simulations corroborate its effectiveness in estimating sparse signals from only a subset of exact observations, thus reducing the processing cost in big data applications.
KW - Compressive sensing
KW - Data censoring
KW - MLE
KW - Online convex optimization
UR - http://www.scopus.com/inward/record.url?scp=84949927327&partnerID=8YFLogxK
U2 - 10.1109/GlobalSIP.2014.7032132
DO - 10.1109/GlobalSIP.2014.7032132
M3 - Conference contribution
AN - SCOPUS:84949927327
T3 - 2014 IEEE Global Conference on Signal and Information Processing, GlobalSIP 2014
SP - 326
EP - 330
BT - 2014 IEEE Global Conference on Signal and Information Processing, GlobalSIP 2014
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2014 IEEE Global Conference on Signal and Information Processing, GlobalSIP 2014
Y2 - 3 December 2014 through 5 December 2014
ER -