Confidence Sets in Time-Series Filtering
Information Theory
2012-07-10 v3 math.IT
Statistics Theory
Statistics Theory
Abstract
The problem of filtering of finite-alphabet stationary ergodic time series is considered. A method for constructing a confidence set for the (unknown) signal is proposed, such that the resulting set has the following properties: First, it includes the unknown signal with probability , where is a parameter supplied to the filter. Second, the size of the confidence sets grows exponentially with the rate that is asymptotically equal to the conditional entropy of the signal given the data. Moreover, it is shown that this rate is optimal.
Cite
@article{arxiv.1012.3059,
title = {Confidence Sets in Time-Series Filtering},
author = {Boris Ryabko and Daniil Ryabko},
journal= {arXiv preprint arXiv:1012.3059},
year = {2012}
}
Comments
some of the results were reported at ISIT2011, St. Petersburg, Russia, pp. 2436-2438