PAPER DIGEST
Most Influential NEURIPS 2012 Paper · 2026-03 edition

Communication-Efficient Algorithms for Statistical Optimization

Yuchen Zhang; Martin J. Wainwright; John C. Duchi

Venue
NEURIPS 2012
Recognition
Most Influential NEURIPS 2012 Paper (Rank No. 11)
Edition
2026-03
Impact factor
7
Certificate ID
5500079582b09b1d

Abstract

We study two communication-efficient algorithms for distributed statistical optimization on large-scale data. The first algorithm is an averaging method that distributes the $N$ data samples evenly to $m$ machines, performs separate minimization on each subset, and then averages the estimates. We provide a sharp analysis of this average mixture algorithm, showing that under a reasonable set of conditions, the combined parameter achieves mean-squared error that decays as $\order(N^{-1}+(N/m)^{-2})$. Whenever $m \le \sqrt{N}$, this guarantee matches the best possible rate achievable by a centralized algorithm having access to all $N$ samples. The second algorithm is a novel method, based on an appropriate form of the bootstrap. Requiring only a single round of communication, it has mean-squared error that decays as $\order(N^{-1}+(N/m)^{-3})$, and so is more robust to the amount of parallelization. We complement our theoretical results with experiments on large-scale problems from the Microsoft Learning to Rank dataset.

Download PDF certificate