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Demand forecasting model for time-series pharmaceutical data using shallow and deep neural network model

机译:基于浅层和深度神经网络模型的时序制药数据需求预测模型

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Demand forecasting is a scientific and methodical assessment of future demand for a critical product.The effective Demand Forecast Model (DFM) enables pharmaceutical companies to be successful in the global market. The purpose of this research paper is to validate various shallow and deep neural network methods for demand forecasting, with the aim of recommending sales and marketing strategies based on the trend/seasonal effects of eight different groups of pharmaceutical products with different characteristics. The root mean squared error (RMSE) is used as the predictive accuracy of DFMs. This study also found that the mean RMSE value of the shallow neural network-based DFMs was 6.27 for all drug categories, which was lower than deep neural network models. According to the findings, DFMs based on shallow neural networks can effectively estimate future demand for pharmaceutical products.
机译:需求预测是对关键产品未来需求的科学和有条不紊的评估。有效的需求预测模型(DFM)使制药公司能够在全球市场上取得成功。本研究论文的目的是验证各种浅层和深度神经网络的需求预测方法,目的是根据八组不同特征的药品的趋势/季节性影响推荐销售和营销策略。均方根误差 (RMSE) 用作 DFM 的预测精度。该研究还发现,基于浅层神经网络的DFMs在所有药物类别中的平均RMSE值均为6.27,低于深度神经网络模型。根据研究结果,基于浅层神经网络的DFM可以有效地估计未来对医药产品的需求。

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