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In-Network Estimation of Frequency Moments (1210.6134v1)

Published 23 Oct 2012 in cs.NI and cs.DC

Abstract: We consider the problem of estimating functions of distributed data using a distributed algorithm over a network. The extant literature on computing functions in distributed networks such as wired and wireless sensor networks and peer-to-peer networks deals with computing linear functions of the distributed data when the alphabet size of the data values is small, O(1). We describe a distributed randomized algorithm to estimate a class of non-linear functions of the distributed data which is over a large alphabet. We consider three types of networks: point-to-point networks with gossip based communication, random planar networks in the connectivity regime and random planar networks in the percolating regime both of which use the slotted Aloha communication protocol. For each network type, we estimate the scaled $k$-th frequency moments, for $k \geq 2$. Specifically, for every $k \geq 2,$ we give a distributed randomized algorithm that computes, with probability $(1-\delta),$ an $\epsilon$-approximation of the scaled $k$-th frequency moment, $F_k/Nk$, using time $O(M{1-\frac{1}{k-1}} T)$ and $O(M{1-\frac{1}{k-1}} \log N \log (\delta{-1})/\epsilon2)$ bits of transmission per communication step. Here, $N$ is the number of nodes in the network, $T$ is the information spreading time and $M=o(N)$ is the alphabet size.

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