Published May 24, 2025 | Version v1
Journal Open

On the Convergence of Inexact Gradient Descent With Controlled Synchronization Steps

  • 1. ROR icon University of Oulu

Contributors

  • 1. ROR icon University of Oulu

Description

We develop a gradient-like algorithm to minimize a sum of peer objective functions based on coordination through a peer interconnection network. The coordination admits two stages: the first is to constitute a gradient, possibly with errors, for updating locally replicated decision variables at each peer and the second is used for error-free averaging for synchronizing local replicas. Unlike many related algorithms, the errors permitted in our algorithm can cover a wide range of inexactnesses, as long as they are bounded. Moreover, we do not impose any gradient boundedness conditions for the objective functions. Furthermore, the second stage is not conducted in a periodic manner, like many related algorithms. Instead, a locally verifiable criterion is devised to dynamically trigger the peer-to-peer coordination at the second stage, so that expensive communication overhead for error-free averaging can significantly be reduced. Finally, the convergence of the algorithm is established under mild conditions.

Files

2208.07797v4.pdf

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Additional details

Funding

European Commission
DESIRE6G - Deep Programmability and Secure Distributed Intelligence for Real-Time End-to-End 6G Networks 101096466

Software