各种优化方法在胃肠道寄生虫病诊断神经网络误差计算中的应用

N. T. Abdullaev, U. N. Musevi, K. Pashaeva
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引用次数: 0

摘要

问题的表述。本工作致力于利用人工神经网络诊断由体内寄生虫影响引起的胃肠道功能状态。在实验中,我们选取了24种可以增加的症状,以及9种最常见的疾病。神经网络诊断与经典医学诊断对特定疾病的符合性。本工作的目的是在描述了胃肠道寄生虫病的预处理、症状隔离和分类方法后,比较神经网络的性能。实验在NeuroPro 0.25软件环境下进行计算机实现,选择优化方法进行网络训练:Par Tan修正的“梯度下降法”、“共轭梯度法”、BFGS。结果。最后给出了采用上述优化方法的多层感知器的预测结果。为了比较优化方法,我们使用了最小和最大网络误差的值。通过对网络误差优化方法的比较,可以得出正确的结论,即对于当前的任务,使用“共轭梯度”优化方法获得的结果最好。现实意义。该方法从评估网络误差的角度出发,为利用神经网络进行胃肠道寄生虫病诊断时,实验医生选择优化方法提供了方便。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of various optimization methods in calculating the error of a neural network for diagnosing parasitological diseases of the gastrointestinal tract
Formulation of the problem. This work is devoted to the use of artificial neural networks for diagnosing the functional state of the gastrointestinal tract caused by the influence of parasites in the body. For the experiment, 24 symptoms were selected, the number of which can be increased, and 9 most common diseases. The coincidence of neural network diagnostics with classical medical diagnostics for a specific disease is shown. The purpose of the work is to compare the neural networks in terms of their performance after describing the methods of preprocessing, isolating symptoms and classifying parasitic diseases of the gastrointestinal tract. Computer implementation of the experiment was carried out in the NeuroPro 0.25 software environment and optimization methods were chosen for training the network: "gradient descent" modified by Par Tan, "conjugate gradients", BFGS. Results. The results of forecasting using a multilayer perceptron using the above optimization methods are presented. To compare optimization methods, we used the values of the minimum and maximum network errors. Comparison of optimization methods using network errors makes it possible to draw the correct conclusion that for the task at hand, the best results were obtained when using the "conjugate gradients" optimization method. Practical significance. The proposed approach facilitates the work of the experimenter-doctor in choosing the optimization method when working with neural networks for the problem of diagnosing parasitic diseases of the gastrointestinal tract from the point of view of assessing the network error.
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