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Automatic Hyperparameter Tuning in Deep Convolutional Neural Networks Using Asynchronous Reinforcement Learning

机译:深层卷积神经网络中使用异步强化学习的自动超参数调整

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Major gains have been made in recent years in object recognition due to advances in deep neural networks. One struggle with deep learning, however, revolves around the fact that currently it is unknown what network architecture is best for a given problem. Consequently, different configurations are tried until one is identified that gives acceptable results. This paper proposes an asynchronous reinforcement learning algorithm that finds an optimal network configuration by automatically adjusting parameters for a given problem. It is shown that asynchronous reinforcement learning is able to converge on an optimal solution for the MNIST data set.
机译:近年来,由于深度神经网络的进步,在对象识别方面取得了重大进展。然而,与深度学习的斗争围绕着一个事实,即目前尚不清楚哪种网络架构最适合特定问题。因此,尝试不同的配置,直到确定出可以接受的结果为止。本文提出了一种异步强化学习算法,该算法通过自动调整给定问题的参数来找到最佳网络配置。结果表明,异步强化学习能够收敛于针对MNIST数据集的最佳解决方案。

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