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首页> 外文期刊>Artificial life and robotics >Deep multi-layered GMDH-type neural network using revised heuristic self-organization and its application to medical image diagnosis of liver cancer
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Deep multi-layered GMDH-type neural network using revised heuristic self-organization and its application to medical image diagnosis of liver cancer

机译:修正启发式自组织的多层GMDH深度神经网络及其在肝癌医学图像诊断中的应用

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摘要

AbstractIn this study, the deep multi-layered group method of data handling (GMDH)-type neural network algorithm using revised heuristic self-organization method is proposed and applied to medical image diagnosis of liver cancer. The deep GMDH-type neural network can automatically organize the deep neural network architecture which has many hidden layers. The structural parameters such as the number of hidden layers, the number of neurons in hidden layers and useful input variables are automatically selected to minimize prediction error criterion defined as Akaike’s information criterion (AIC) or prediction sum of squares (PSS). The architecture of the deep neural network is automatically organized using the revised heuristic self-organization method which is a type of the evolutionary computation. This new neural network algorithm is applied to the medical image diagnosis of the liver cancer and the recognition results are compared with the conventional 3-layered sigmoid function neural network.
机译: Abstract 在本研究中,数据处理的深度多层组方法(GMDH提出了一种改进的启发式自组织方法的)型神经网络算法,并将其应用于肝癌的医学图像诊断。深度GMDH型神经网络可以自动组织具有许多隐藏层的深度神经网络体系结构。系统会自动选择结构参数,例如隐藏层数,隐藏层中神经元数和有用的输入变量,以最小化定义为赤池信息准则(AIC)或预测平方和(PSS)的预测误差准则。深度神经网络的体系结构是使用改进的启发式自组织方法自动组织的,该方法是一种进化计算。这种新的神经网络算法被应用于肝癌的医学图像诊断,并将识别结果与传统的三层乙状结肠功能神经网络进行比较。

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