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Amortized Nesterov’s Momentum A Robust Momentum and Its Application to Deep Learning

机译:摊销Nesterov的势头是一个强大的势头及其在深入学习的应用

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This work proposes a novel momentum technique, the Amortized Nesterov’s Momentum, for stochastic convex optimization. The proposed method can be regarded as a smooth transition between Nesterov’s method and mirror descent. By tuning only a single parameter, users can trade Nesterov’s acceleration for robustness, that is, the variance control of the stochastic noise. Motivated by the recent success of using momentum in deep learning, we conducted extensive experiments to evaluate this new momentum in deep learning tasks. The results suggest that it can serve as a favorable alternative for Nesterov’s momentum.
机译:这项工作提出了一种新颖的动量技术,摊销Nesterov的动量,用于随机凸优化。所提出的方法可以被认为是Nesterov方法和镜子血液之间的平滑过渡。通过仅调整单个参数,用户可以交易Nesterov的稳健性的加速度,即随机噪声的方差控制。最近在深入学习中使用势头的成功激励,我们进行了广泛的实验,以评估深入学习任务的新势头。结果表明它可以作为Nesterov势头的有利替代品。

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