Lower bounds on the estimation error in problems of distributed computation

G. Como, M. Dahleh
2009 2009 Information Theory and Applications Workshop  
Information-theoretic lower bounds on the estimation error are derived for problems of distributed computation. These bounds hold for a network attempting to compute a real-vector-valued function of the global information, when the nodes have access to partial information and can communicate through noisy transmission channels. The presented bounds are algorithm-independent, and improve on recent results by Ayaso et al., where the exponential decay rate of the mean square error was
more » ... by the minimum normalized cut-set capacity. We show that, if the transmission channels are stochastic, the highest achievable exponential decay rate of the mean square error is in general strictly smaller than the minimum normalized cut-set capacity of the network. This is due to atypical channel realizations, which, despite their asymptotically vanishing probability, affect the error exponent.
doi:10.1109/ita.2009.5044925 fatcat:wgor66pddjg6bnmcbe4d3vel7q