DocumentCode
3731797
Title
Bias correction for distributed Bayesian estimators
Author
David Luengo;Luca Martino;V?ctor Elvira;M?nica Bugallo
Author_Institution
Dep. of Signal Theory and Communic., Universidad Polit?cnica de Madrid, 28031 (Spain)
fYear
2015
Firstpage
253
Lastpage
256
Abstract
Dealing with the whole dataset in big data estimation problems is usually unfeasible. A common solution then consists of dividing the data into several smaller sets, performing distributed Bayesian estimation and combining these partial estimates to obtain a global estimate. A major problem of this approach is the presence of a non-negligible bias in the partial estimators, due to the mismatch between the unknown true prior and the prior assumed in the estimation. A simple method to mitigate the effect of this bias is proposed in this paper. Essentially, the approach is based on using a reference data set to obtain a rough estimation of the parameter of interest, i.e., a reference parameter. This information is then communicated to the partial filters that handle the smaller data sets, which can thus use a refined prior centered around this parameter. Simulation results confirm the good performance of this scheme.
Keywords
"Bayes methods","Estimation","Big data","Wireless sensor networks","Distributed databases","Probability density function","Conferences"
Publisher
ieee
Conference_Titel
Computational Advances in Multi-Sensor Adaptive Processing (CAMSAP), 2015 IEEE 6th International Workshop on
Type
conf
DOI
10.1109/CAMSAP.2015.7383784
Filename
7383784
Link To Document