Improved Sublinear-time Moment Estimation using Weighted Sampling
Anup Bhattacharya, Pinki Pradhan

TL;DR
This paper advances the understanding of sublinear algorithms for moment estimation with weighted sampling, providing tight bounds for various parameter ranges and introducing a new input parameter for beyond worst-case analysis.
Contribution
It presents the first sublinear algorithms for 0<t<1, establishes tight bounds for t>1, and introduces the moment-density parameter for beyond worst-case analysis.
Findings
Sublinear algorithms are possible for t>1/2.
No sublinear algorithms exist for t≤1/2.
Tight sample complexity bounds are established for t≥2.
Abstract
In this work we study the {\it moment estimation} problem using weighted sampling. Given sample access to a set with weighted elements, and a parameter , we estimate the -th moment of given as . For t=1, this is the sum estimation problem. The moment estimation problem along with a number of its variants have been extensively studied in streaming, sublinear and distributed communication models. Despite being well studied, we don't yet have a complete understanding of the sample complexity of the moment estimation problem in the sublinear model and in this work, we make progress on this front. On the algorithmic side, our upper bounds match the known upper bounds for the problem for . To the best of our knowledge, no sublinear algorithms were known for this problem for . We design a sublinear algorithm for this problem for …
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