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Intelligent Sales Prediction for Pharmaceutical Distribution Companies: A Data Mining Based Approach

机译:药品配送公司智能销售预测:基于数据挖掘的方法

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One of the problems of pharmaceutical distribution companies (PDCs) is how to control inventory levels in order to prevent costs of excessive inventory and to prevent losing customers due to drug shortage. Consequently, the purpose of this study is to propose a novel method to forecast sales of PDCs. The presented method is a combination of network analysis tools and time series forecasting methods. Due to lack of enough past sales records of each drug, an explorative network based analysis is conducted to find clique sets and group members and to use comembers’ sales data in their sales prediction. Afterwards, time series sales forecasting models were built with three different approaches including ARIMA methodology, neural network, and an advanced hybrid neural network approach. The offered hybrid method by applying each drug and its comembers past records facilitates capturing both linear and nonlinear patterns of sales accurately. The performance of the proposed method was evaluated by a real dataset provided by one of the leading PDCs in Iran. The results indicated that the proposed method is able to cope with low number of past records while it forecasts medicines sales accurately.
机译:药品分销公司(PDC)的问题之一是如何控制库存水平以防止过度库存的成本,并防止由于毒品短缺而失去客户。因此,本研究的目的是提出一种预测PDC销售的新方法。呈现的方法是网络分析工具和时间序列预测方法的组合。由于每种药物的过去销售记录缺乏足够的销售记录,进行了探索的基于网络的分析,以查找集团集和团体成员,并使用商长’销售数据在销售预测中。之后,时间序列销售预测模型采用三种不同的方法,包括Arima方法,神经网络和先进的混合神经网络方法。通过应用每种药物及其商用的传统方法提供了促进的混合方法,以便准确地捕获线性和非线性销售模式。所提出的方法的性能由伊朗领先的PDC提供的真实数据集进行评估。结果表明,该方法能够应对低数量的过去记录,同时预测药品销售准确。

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