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Indonesia Tuberculosis Morbidity Rate Forecasting Using Recurrent Neural Network

机译:印度尼西亚结核病发病率预测使用反复性神经网络

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Several insurance companies sell health insurance products that cover tuberculosis risk. One principal component to determine the insurance premium that must be paid by the insured is the morbidity rate. Therefore, morbidity rate forecasting is essential for an insurance company. In this paper, we present the Indonesia tuberculosis morbidity rate forecasting using Recurrent Neural Network (RNN) which is part of deep learning. Min-Max Scaler was applied to the data before it is used as RNN input to achieve better prediction. Unfortunately, the result shows that RNN performance is not satisfactory due to limited morbidity rate data in Indonesia.
机译:几家保险公司销售覆盖结核病风险的健康保险产品。 一个主要成分确定所属保险必须支付的保险费是发病率。 因此,发病率预测对保险公司至关重要。 在本文中,我们介绍了使用经常性神经网络(RNN)的印度尼西亚结核病发病率预测,这是深度学习的一部分。 在用作RNN输入以实现更好的预测之前,将MIN-MAX缩放器应用于数据。 遗憾的是,由于印度尼西亚的有限发病率数据,RNN性能并不令人满意。

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