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JSTSP
2016

Robust Censoring Using Metropolis-Hastings Sampling

8 years 20 days ago
Robust Censoring Using Metropolis-Hastings Sampling
—The tasks of online data reduction and outlier rejection are both of high interest when large amounts of data are to be processed for inference. Rather than performing these tasks separately, we propose a joint approach, i.e., robust censoring. We formulate the problem as a non-convex optimization problem based on the data model for outlier-free data, without requiring prior model assumptions about the outlier perturbations. Moreover, our approach is general in that it is not restricted to any specific data model and does not rely on linearity, uncorrelated measurements, or additive Gaussian noise. For a given desired compression rate, the choice of the reduced dataset is optimal in the sense that it jointly maximizes the likelihood together with the inferred model parameters. An extension of the problem formulation allows for taking the average estimation performance into account in a hybrid optimality criterion. To solve the problem of robust censoring, we propose a Metropolis-Ha...
Georg Kail, Sundeep Prabhakar Chepuri, Geert Leus
Added 07 Apr 2016
Updated 07 Apr 2016
Type Journal
Year 2016
Where JSTSP
Authors Georg Kail, Sundeep Prabhakar Chepuri, Geert Leus
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