Rethinking Decentralized Learning: Towards More Realistic Evaluations with a Metadata-Agnostic Approach

Published: 06 Mar 2025, Last Modified: 06 Mar 2025MCDC @ ICLR 2025EveryoneRevisionsBibTeXCC BY 4.0
Keywords: Decentralized Learning, Metadata-Agnostic
TL;DR: We propose to use metadata-agnostic approach in decentralized learning for more realistic evaluations. We emphasis algorithms can get very different conclusion based on different evaluation settings.
Abstract:

Decentralized learning has been regarded as a privacy-preserving training paradigm that enables distributed model training without exposing raw data. However, many experimental settings in decentralized learning research assume metadata awareness among participants, which contradicts real-world constraints where participants lack shared metadata knowledge. We distinguish between Metadata-Dependent Supervised Learning (MDSL), which assumes global metadata synchronization, and Metadata-Agnostic Zero-Shot Learning (MAZEL), where participants do not share metadata. Our contributions are (1) highlight the difference between MAZEL and MDSL; (2) present empirical evidence demonstrating that long-held claims of MDSL-based decentralized learning may not hold under MAZEL settings; (3) provide benchmarks using up to 8–16 diverse datasets to rigorously evaluate newly proposed decentralized methods under real metadata-agnostic cases; and (4) propose two-stage and cosine gossip schedulers to optimize communication efficiency. Our code is available at: https://anonymous.4open.science/r/More-Realistic-Evaluations.

Submission Number: 5
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