$\ell_p$-Regression in the Arbitrary Partition Model of Communication
Yi Li, Honghao Lin, David P. Woodruff

TL;DR
This paper investigates the randomized communication complexity of distributed $ ext{l}_p$-regression in the arbitrary partition model, providing new bounds that improve upon previous work for various values of p.
Contribution
The paper establishes the first optimal bounds for $ ext{l}_2$-regression and improved bounds for $p eq 2$, advancing understanding of communication complexity in distributed regression.
Findings
Optimal $ ilde{ heta}(sd^2 + sd/ ext{epsilon})$ bits for $p=2$.
New upper bounds for $p eq 2$ with linear dependence on $1/ ext{epsilon}$.
Communication lower bounds matching the upper bounds up to polylog factors.
Abstract
We consider the randomized communication complexity of the distributed -regression problem in the coordinator model, for . In this problem, there is a coordinator and servers. The -th server receives and and the coordinator would like to find a -approximate solution to . Here for convenience. This model, where the data is additively shared across servers, is commonly referred to as the arbitrary partition model. We obtain significantly improved bounds for this problem. For , i.e., least squares regression, we give the first optimal bound of bits. For ,we obtain an upper…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Stochastic Gradient Optimization Techniques · Privacy-Preserving Technologies in Data
