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Performance comparison of artificial neural networks learning algorithms and activation functions in predicting severity of autism

机译:人工神经网络学习算法和激活函数在预测自闭症严重程度方面的性能比较

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Artificial neural networks are one of the most efficient methods for pattern recognition and have a vast range of applications for aiding medical decision making. The proposed study applies feed-forward back-propagation neural networks as a classifier and compares the combination of nine learning algorithms and three activation functions to build a knowledge-based system with the best network architecture for predicting the severity of autism. The performances of the derived models were evaluated based on statistical criteria such as mean squared error (MSE), mean absolute percentage error (MAPE), root mean squared error (RMSE), regression (R value), training time and number of epochs. The study findings showed that the optimal performance was achieved by model MLP_LM_104 trained on Levenberg-Marquardt (LM) back-propagation algorithm having network topology of 40-10-4 with purelin and tansig activation functions in hidden and output layers. The regression coefficients for training, validation and test datasets were 0.996, 0.996 and 0.994, respectively. The MSE, RMSE and MAPE were 2:26×10~(-4), 1:50×10~(-2) and 1:13, respectively. Furthermore, BFGS quasi-Newton (BFG), conjugate gradient, gradient descent and resilient back-propagation (RP) algorithms did not perform well. Models trained with BFG algorithms required longer training time, whereas the performance of models trained on RP algorithm got worse as the numbers of hidden neurons were increased.
机译:人工神经网络是用于模式识别的最有效方法之一,在辅助医疗决策方面具有广泛的应用。拟议的研究应用前馈反向传播神经网络作为分类器,并比较了九种学习算法和三种激活功能的组合,以构建具有最佳网络体系结构的知识体系,以预测自闭症的严重程度。基于统计标准(例如均方误差(MSE),平均绝对百分比误差(MAPE),均方根误差(RMSE),回归(R值),训练时间和历元数)评估衍生模型的性能。研究结果表明,通过在Levenberg-Marquardt(LM)反向传播算法上训练的模型MLP_LM_104具有40-10-4的网络拓扑结构,并在隐藏层和输出层中具有purelin和tansig激活功能,可以实现最佳性能。训练,验证和测试数据集的回归系数分别为0.996、0.996和0.994。 MSE,RMSE和MAPE分别为2:26×10〜(-4),1:50×10〜(-2)和1:13。此外,BFGS准牛顿(BFG),共轭梯度,梯度下降和弹性反向传播(RP)算法的效果不佳。使用BFG算法训练的模型需要更长的训练时间,而使用RPG算法训练的模型的性能随着隐藏神经元数量的增加而变差。

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