Optimal Routing for Federated Learning over Dynamic Satellite Networks: Tractable or Not?
Yi Zhao, Di Yuan, Tao Deng, Suzhi Cao, and Ying Dong

TL;DR
This paper analyzes the complexity of routing optimization in satellite-based federated learning, identifying which scenarios are computationally feasible and providing algorithms for tractable cases.
Contribution
It offers a comprehensive tractability analysis of routing problems in in-orbit federated learning, establishing complexity boundaries and proposing efficient algorithms where possible.
Findings
Polynomial-time algorithms for certain routing schemes
NP-hardness proofs for complex routing scenarios
Clear delineation of tractable versus intractable regimes
Abstract
Federated learning (FL) is a key paradigm for distributed model learning across decentralized data sources. Communication in each FL round typically consists of two phases: (i) distributing the global model from a server to clients, and (ii) collecting updated local models from clients to the server for aggregation. This paper focuses on a type of FL where communication between a client and the server is relay-based over dynamic networks, making routing optimization essential. A typical scenario is in-orbit FL, where satellites act as clients and communicate with a server (which can be a satellite, ground station, or aerial platform) via multi-hop inter-satellite links. This paper presents a comprehensive tractability analysis of routing optimization for in-orbit FL under different settings. For global model distribution, these include the number of models, the objective function, and…
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