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Comparing activation functions in predicting dengue hemorrhagic fever cases in DKI Jakarta using recurrent neural networks

机译:比较激活功能在使用反复神经网络预测DKI Jakarta中登革热出血性能的影响

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Dengue hemorrhagic fever (DHF) is a disease caused by the dengue virus and spread by infected Aedes aegypti and A. albopictus mosquitoes. Various socio-economic and environmental factors make it difficult to predict DHF incidents. However, with machine learning, we can make more accurate predictions based on historic data. The spread of DHF in a given region can be predicted based on incident data. In this research, one means of machine learning, the Recurrent Neural Network (RNN), is used to predict DHF incidents in DKI Jakarta by using historic DHF case data from 2009 to 2017. RNN is a neural network with a recurrent hidden state which is activated using current data and previous data. RNNs are well-suited to predicting time-series data. In the implementation, we use three activation functions that is sigmoid, tanh, and ReLU to determine which one is the most accurate in predicting DHF incidents in Jakarta. The implementation results show that the sigmoid activation function can give better results on the RNN model compared to tanh and ReLU activation functions.
机译:登革热出血热(DHF)是一种由登革热病毒引起的疾病,并通过感染的AEDES AEGYPTI和A. Alpopictus蚊子传播。各种社会经济和环境因素使得难以预测DHF事件。然而,通过机器学习,我们可以基于历史数据做出更准确的预测。可以基于入射数据预测给定区域中的DHF的扩展。在本研究中,一种机器学习方法,经常性神经网络(RNN),用于通过使用2009年至2017年的历史DHF案例数据来预测DKI雅加达的DHF事件.RNN是一种具有复发隐藏状态的神经网络使用当前数据和以前的数据激活。 RNN非常适合预测时间序列数据。在实现中,我们使用三个激活功能,即Sigmoid,Tanh和Relu,以确定哪一个最准确地预测雅加达的DHF事件。实现结果表明,与Tanh和Relu激活功能相比,Sigmoid激活功能可以在RNN模型中提供更好的结果。

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