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Collaborative Edge Inference via Semantic Grouping under Wireless Channel Constraints

Published: October 2, 2025 | arXiv ID: 2510.02222v1

By: Mateus P. Mota, Mattia Merluzzi, Emilio Calvanese Strinati

Potential Business Impact:

Lets devices share smart ideas to work better.

Business Areas:
Crowdsourcing Collaboration

In this paper, we study the framework of collaborative inference, or edge ensembles. This framework enables multiple edge devices to improve classification accuracy by exchanging intermediate features rather than raw observations. However, efficient communication strategies are essential to balance accuracy and bandwidth limitations. Building upon a key-query mechanism for selective information exchange, this work extends collaborative inference by studying the impact of channel noise in feature communication, the choice of intermediate collaboration points, and the communication-accuracy trade-off across tasks. By analyzing how different collaboration points affect performance and exploring communication pruning, we show that it is possible to optimize accuracy while minimizing resource usage. We show that the intermediate collaboration approach is robust to channel errors and that the query transmission needs a higher degree of reliability than the data transmission itself.

Page Count
5 pages

Category
Computer Science:
Information Theory