Prediction based storage management in the smart grid
Balakrishnan Narayanaswamy, Vikas K. Garg, et al.
SmartGridComm 2012
We consider the problem of estimating cascaded norms in a data stream, a well-studied generalization of the classical norm estimation problem, where the data is aggregated in a cascaded fashion along multiple attributes. We show that when the number of attributes for each item is at most d, then estimating the cascaded norm Lk○L1 requires space Ω(d·n1-2/k) for every d = O(n1/k). This result interpolates between the tight lower bounds known previously for the two extremes of d = 1 and d = Θ(n1/k) [1]. The proof of this result uses the information complexity paradigm that has proved successful in obtaining tight lower bounds for several well-known problems. We use the above data stream problem as a motivation to sketch some of the key ideas of this paradigm. In particular, we give a unified and a more general view of the key negative-type inequalities satisfied by the transcript distributions of communication protocols. © 2013 IEEE.
Balakrishnan Narayanaswamy, Vikas K. Garg, et al.
SmartGridComm 2012
T.S. Jayram
SIGMOD/PODS/ 2010
T.S. Jayram, Andrew McGregor, et al.
ACM TODS
Ziv Bar-Yossef, T.S. Jayram, et al.
Journal of Computer and System Sciences