MaxDropoutV2:一种改进的卷积神经网络中丢弃神经元的方法

C. F. G. Santos, Mateus Roder, L. A. Passos, J. P. Papa
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引用次数: 0

摘要

在过去十年中,指数级数据增长提供了基于机器学习的算法的能力,并使它们能够在日常生活活动中使用。此外,这种改进部分是由于深度学习技术的出现,即简单架构的堆栈最终形成更复杂的模型。尽管这两个因素都产生了出色的结果,但它们也在学习过程中带来了缺点,因为训练复杂模型意味着一项昂贵的任务,并且结果容易与训练数据过拟合。最近提出了一种名为MaxDropout的监督正则化技术来解决后者,它对传统的正则化方法进行了一些改进。在本文中,我们介绍了它的改进版本MaxDropoutV2。考虑两个公共数据集的结果表明,该模型比标准版本执行得更快,并且在大多数情况下提供了更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MaxDropoutV2: An Improved Method to Drop out Neurons in Convolutional Neural Networks
In the last decade, exponential data growth supplied the machine learning-based algorithms' capacity and enabled their usage in daily life activities. Additionally, such an improvement is partially explained due to the advent of deep learning techniques, i.e., stacks of simple architectures that end up in more complex models. Although both factors produce outstanding results, they also pose drawbacks regarding the learning process since training complex models denotes an expensive task and results are prone to overfit the training data. A supervised regularization technique called MaxDropout was recently proposed to tackle the latter, providing several improvements concerning traditional regularization approaches. In this paper, we present its improved version called MaxDropoutV2. Results considering two public datasets show that the model performs faster than the standard version and, in most cases, provides more accurate results.
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