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ApDeepSense: Deep Learning Uncertainty Estimation without the Pain for IoT Applications

机译:ApDeepSense:深度学习不确定性估计,而物联网应用不会感到痛苦

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Recent advances in deep-learning-based applications have attracted a growing attention from the IoT community. These highly capable learning models have shown significant improvements in expected accuracy of various sensory inference tasks. One important and yet overlooked direction remains to provide uncertainty estimates in deep learning outputs. Since robustness and reliability of sensory inference results are critical to IoT systems, uncertainty estimates are indispensable for IoT applications. To address this challenge, we develop ApDeepSense, an effective and efficient deep learning uncertainty estimation method for resource-constrained IoT devices. ApDeepSense leverages an implicit Bayesian approximation that links neural networks to deep Gaussian processes, allowing output uncertainty to be quantified. Our approach is shown to significantly reduce the execution time and energy consumption of uncertainty estimation thanks to a novel layer-wise approximation that replaces the traditional computationally intensive sampling-based uncertainty estimation methods. ApDeepSense is designed for neural net-works trained using dropout; one of the most widely used regularization methods in deep learning. No additional training is needed for uncertainty estimation purposes. We evaluate ApDeepSense using four IoT applications on Intel Edison devices. Results show that ApDeepSense can reduce around 88.9% of the execution time and 90.0% of the energy consumption, while producing more accurate uncertainty estimates compared with state-of-the-art methods.
机译:基于深度学习的应用程序的最新进展吸引了IoT社区越来越多的关注。这些功能强大的学习模型已显示出各种感官推断任务的预期准确性有了显着提高。在深度学习输出中提供不确定性估计仍然是一个重要但仍被忽略的方向。由于感觉推断结果的鲁棒性和可靠性对于物联网系统至关重要,因此不确定性估计对于物联网应用是必不可少的。为了应对这一挑战,我们开发了ApDeepSense,这是一种针对资源受限的IoT设备的有效且高效的深度学习不确定性估计方法。 ApDeepSense利用隐式贝叶斯逼近,将神经网络链接到深高斯过程,从而可以量化输出不确定性。通过新颖的逐层逼近,它取代了传统的基于计算密集型采样的不确定性估算方法,证明了我们的方法可显着减少不确定性估算的执行时间和能耗。 ApDeepSense专为使用辍学训练的神经网络而设计;深度学习中使用最广泛的正则化方法之一。出于不确定性估计的目的,不需要额外的培训。我们使用英特尔Edison设备上的四个IoT应用程序评估ApDeepSense。结果表明,与最先进的方法相比,ApDeepSense可以减少大约88.9%的执行时间和90.0%的能耗,同时可以提供更准确的不确定性估计。

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