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超曲早期退出网络提升资源受限设备事件检测
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本文提出一种名为Hyperbolic Early-Exit (HypEE)的新框架,通过在双曲空间学习早期退出表示,解决资源受限设备上准确事件检测的挑战。该框架采用层次化训练目标和新颖的蕴含损失,保证深层网络层几何上细化浅层层的表示。实验表明,HypEE在多个音频事件检测任务和骨干架构上显著优于标准欧几里得早期退出基线。

arXiv:2511.00641v1 Announce Type: cross Abstract: Deploying accurate event detection on resource-constrained devices is challenged by the trade-off between performance and computational cost. While Early-Exit (EE) networks offer a solution through adaptive computation, they often fail to enforce a coherent hierarchical structure, limiting the reliability of their early predictions. To address this, we propose Hyperbolic Early-Exit networks (HypEE), a novel framework that learns EE representations in the hyperbolic space. Our core contribution is a hierarchical training objective with a novel entailment loss, which enforces a partial-ordering constraint to ensure that deeper network layers geometrically refine the representations of shallower ones. Experiments on multiple audio event detection tasks and backbone architectures show that HypEE significantly outperforms standard Euclidean EE baselines, especially at the earliest, most computationally-critical exits. The learned geometry also provides a principled measure of uncertainty, enabling a novel triggering mechanism that makes the overall system both more efficient and more accurate than a conventional EE and standard backbone models without early-exits.

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事件检测 资源受限设备 双曲空间 早期退出网络 音频检测
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