Task-oriented Over-the-air Computation for Edge-device Co-inference with Balanced Classification Accuracy
Xiang Jiao, Dingzhu Wen, Guangxu Zhu, Wei Jiang, Wu Luo, Yuanming Shi

TL;DR
This paper introduces a task-oriented over-the-air computation scheme for edge-device co-inference, focusing on balanced classification accuracy by maximizing the minimum pair-wise discriminant gain, with adaptive power allocation and verified through human motion recognition experiments.
Contribution
It proposes a novel inference accuracy metric and joint optimization method that enhances balanced classification performance in multi-device AI systems over wireless networks.
Findings
Improved balanced classification accuracy in experiments.
Adaptive power allocation enhances inference performance.
Outperforms existing schemes in human motion recognition tasks.
Abstract
Edge-device co-inference, which concerns the cooperation between edge devices and an edge server for completing inference tasks over wireless networks, has been a promising technique for enabling various kinds of intelligent services at the network edge, e.g., auto-driving. In this paradigm, the concerned design objective of the network shifts from the traditional communication throughput to the effective and efficient execution of the inference task underpinned by the network, measured by, e.g., the inference accuracy and latency. In this paper, a task-oriented over-the-air computation scheme is proposed for a multidevice artificial intelligence system. Particularly, a novel tractable inference accuracy metric is proposed for classification tasks, which is called minimum pair-wise discriminant gain. Unlike prior work measuring the average of all class pairs in feature space, it…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Image and Video Quality Assessment · Advanced Memory and Neural Computing
