深度学习中的多种激活函数

Bin Wang, Tianrui Li, Yanyong Huang, Huaishao Luo, Dongming Guo, S. Horng
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引用次数: 4

摘要

我们引入了多种激活函数的概念,并将其应用于卷积自编码器(CAE)中,开发了多种激活CAE (DaCAE),大大减少了重构损失。与仅具有相同类型激活函数的普通CAE相比,DaCAE通过考虑它们的协作性和位置而包含了多种激活。在重建能力方面,DaCAE明显优于普通CAE和全连接的Auto-Encoder,我们总结了设计各种激活网络的经验法则。基于从DaCAE中提取的高质量的潜在瓶颈特征,我们证明了模糊规则分类器在监督学习中优于softmax层的令人满意的优势。这些结果可以被视为尝试使用不同激活来训练深度神经网络以及将模糊推理系统与深度学习相结合的新研究点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diverse activation functions in deep learning
We introduce the concept of diverse activation functions, and apply them into Convolutional Auto-Encoder (CAE) to develop diverse activation CAE (DaCAE), which considerably reduces the reconstruction loss. In contrast to vanilla CAE only with activation functions of the same types, DaCAE incorporates diverse activations by considering their cooperation and location. In terms of the reconstruction capability, DaCAE significantly outperforms vanilla CAE and full connected Auto-Encoder, and we conclude rules of thumb on designing diverse activations networks. Based on the high quality of the latent bottleneck features extracted from DaCAE, we demonstrate a satisfying advantage that fuzzy rules classifier performs better than softmax layer in supervised learning. These results could be seen as new research points in the attempts at using diverse activations to train deep neural networks and combining fuzzy inference systems with deep learning.
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