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    Home»AI Tools»[2510.26722] Non-Convex Over-the-Air Heterogeneous Federated Learning: A Bias-Variance Trade-off
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    [2510.26722] Non-Convex Over-the-Air Heterogeneous Federated Learning: A Bias-Variance Trade-off

    AwaisBy AwaisFebruary 16, 2026No Comments2 Mins Read0 Views
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    [Submitted on 30 Oct 2025 (v1), last revised 13 Feb 2026 (this version, v4)]

    View a PDF of the paper titled Non-Convex Over-the-Air Heterogeneous Federated Learning: A Bias-Variance Trade-off, by Muhammad Faraz Ul Abrar and Nicol\`o Michelusi

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    Abstract:Over-the-air (OTA) federated learning (FL) has been well recognized as a scalable paradigm that exploits the waveform superposition of the wireless multiple-access channel to aggregate model updates in a single use. Existing OTA-FL designs largely enforce zero-bias model updates by either assuming \emph{homogeneous} wireless conditions (equal path loss across devices) or forcing zero-bias updates to guarantee convergence. Under \emph{heterogeneous} wireless scenarios, however, such designs are constrained by the weakest device and inflate the update variance. Moreover, prior analyses of biased OTA-FL largely address convex objectives, while most modern AI models are highly non-convex. Motivated by these gaps, we study OTA-FL with stochastic gradient descent (SGD) for general smooth non-convex objectives under wireless heterogeneity. We develop novel OTA-FL SGD updates that allow a structured, time-invariant model bias while facilitating reduced variance updates. We derive a finite-time stationarity bound (expected time average squared gradient norm) that explicitly reveals a bias-variance trade-off. To optimize this trade-off, we pose a non-convex joint OTA power-control design and develop an efficient successive convex approximation (SCA) algorithm that requires only statistical CSI at the base station. Experiments on a non-convex image classification task validate the approach: the SCA-based design accelerates convergence via an optimized bias and improves generalization over prior OTA-FL baselines.

    Submission history

    From: Muhammad Faraz Ul Abrar [view email]
    [v1]
    Thu, 30 Oct 2025 17:22:57 UTC (977 KB)
    [v2]
    Fri, 31 Oct 2025 16:41:57 UTC (977 KB)
    [v3]
    Thu, 6 Nov 2025 17:41:05 UTC (975 KB)
    [v4]
    Fri, 13 Feb 2026 17:30:13 UTC (975 KB)

    BiasVariance Federated Heterogeneous Learning Nonconvex OvertheAir TradeOff
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    Awais
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