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A New Generalized Deep Learning Framework Combining Sparse Autoencoder and Taguchi Method for Novel Data Classification and Processing

机译:一种新的广义深度学习框架,结合了稀疏自动化器和Taguchi方法的新型数据分类和处理

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摘要

Deep autoencoder neural networks have been widely used in several image classification and recognition problems, including hand-writing recognition, medical imaging, and face recognition. The overall performance of deep autoencoder neural networks mainly depends on the number of parameters used, structure of neural networks, and the compatibility of the transfer functions. However, an inappropriate structure design can cause a reduction in the performance of deep autoencoder neural networks. A novel framework, which primarily integrates the Taguchi Method to a deep autoencoder based system without considering to modify the overall structure of the network, is presented. Several experiments are performed using various data sets from different fields, i.e., network security and medicine. The results show that the proposed method is more robust than some of the well-known methods in the literature as most of the time our method performed better. Therefore, the results are quite encouraging and verified the overall performance of the proposed framework.
机译:深度自动化器神经网络已广泛用于多种图像分类和识别问题,包括手写识别,医学成像和面部识别。深度自动化器神经网络的整体性能主要取决于所使用的参数数量,神经网络的结构,以及传递函数的兼容性。但是,不当结构设计可能导致深度自动化器神经网络的性能降低。一种新颖的框架,主要将Taguchi方法集成到基于深度的自动控制器的系统,而不考虑修改网络的整体结构。使用来自不同字段的各种数据集,即网络安全性和医学来执行几个实验。结果表明,该方法比在文献中的一些众所周知的方法中的大部分时间更具众所周知的方法更强。因此,结果非常令人鼓舞并验证了拟议框架的整体表现。

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