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A Novel Solution of an Enhanced Error and Loss Function using Deep Learning for Hypertension Classification in Traditional Medicine

机译:一种新的一种增强误差和损失功能的解决方案,使用深受传统医学中的高血压分类

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Deep Learning in traditional medicine has different ways to detect and classify hypertension. However, not many researches have combined those ways to classify hypertension more accurately. This research aims to combine two of the most popular ways i.e. Tongue image and symptoms to increase the accuracy of detecting hypertension.The proposed system consists of training the parameters using error function with a Rectified Linear Unit (ReLU) Function and combining the learned features of both tongue image and symptoms using vector outer product. The proposed solution was tested on different data samples and provides the classification accuracy of 94.25% against the current average accuracy of 90.75%. The proposed solution only focused on increasing the classification accuracy. However, the proposed solution has not increased the processing time while doing so, instead the average processing time has decreased from 0.3774 to 0.3482.The proposed solution has increased the classification accuracy and decreased the processing time for classifying the hypertension in traditional medicine. The enhanced error function and loss function with ReLU activation function solves the vanishing gradient problem to achieve the accuracy of 94.25%.
机译:传统医学中的深度学习有不同的方法来检测和分类高血压。然而,没有许多研究将这些方法组合在内更准确地对高血压进行分类。本研究旨在将两种最流行的方式组合,即舌形象和症状来提高检测高血压的准确性。该建议的系统包括使用误差函数与整流的线性单元(Relu)功能进行训练,并组合学习功能舌头图像和症状使用矢量外产品。提出的解决方案是对不同的数据样本进行测试,并提供了94.25%的针对90.75%的当前平均精度分类精度。所提出的解决方案仅侧重于增加分类准确性。然而,尽管这样做所提出的方案并没有增加处理时间,而不是平均处理时间从0.3774到0.3482.The提出的解决方案,增加了分类精度,降低了处理时间在传统医药高血压分级下降。具有Relu激活功能的增强误差功能和损耗功能解决了消失的梯度问题,以实现94.25%的准确性。

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