Convolutional neural networks (CNNs) have been used in many machine learning fields. In practical applications, the computational cost of convolutional neural networks is often high with the deepening of the network and the growth of data volume, mostly due to a large amount of multiplication operations of floating-point numbers in convolution operations. To reduce the amount of multiplications, we propose a new type of CNNs called Tropical Convolutional Neural Networks (TCNNs) which are built on tropical convolutions in which the multiplications and additions in conventional convolutional layers are replaced by additions and min/max operations respectively. In addition, since tropical convolution operators are essentially nonlinear operators, we expect TCNNs to have higher nonlinear fitting ability than conventional CNNs. In the experiments, we test and analyze several different architectures of TCNNs for image classification tasks in comparison with similar-sized conventional CNNs. The results show that TCNN can achieve higher expressive power than ordinary convolutional layers on the MNIST and CIFAR10 image data set. In different noise environments, there are wins and losses in the robustness of TCNN and ordinary CNNs.
翻译:在许多机器学习领域都使用了革命神经网络(CNNs),在实际应用中,随着网络的深化和数据量的增长,进化神经网络的计算成本往往很高,这主要是因为在进化行动中浮点数的倍增操作量很大。为了减少乘数,我们提议了新型CNN,称为热带进化神经网络(TCNNs),它建在热带革命上,常规进化层的乘数和增量分别由增量和微量/负量操作取代。此外,由于热带进化神经网络的操作者基本上是非线性操作者,我们期望TCNNs比常规CNNs具有更高的非线性安装能力。在实验中,我们测试和分析TCNNs与类似规模的常规CNNS相比的图像分类任务的若干不同的结构。结果显示,TCNN在MNIST和CICN10图像数据集上,其表达力可以高于普通进化层。在普通的进化层中,在普通的噪音环境中,NCNN是赢的。