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Coping with demand volatility in retail pharmacies with the aid of big data exploration

机译:借助大数据探索应对零售药店的需求波动

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Data management tools and analytics have provided managers with the opportunity to contemplate inventory performance as an ongoing activity by no longer examining only data agglomerated from ERP systems, but also, considering internet information derived from customers' online buying behaviour. The realisation of this complex relationship has increased interest in business intelligence through data and text mining of structured, semi-structured and unstructured data, commonly referred to as "big data" to uncover underlying patterns which might explain customer behaviour and improve the response to demand volatility. This paper explores how sales structured data can be used in conjunction with non-structured customer data to improve inventory management either in terms of forecasting or treating some inventory as "top-selling" based on specific customer tendency to acquire more information through the internet. A medical condition is considered - namely pain - by examining 129 weeks of sales data regarding analgesics and information seeking data by customers through Google, online newspapers and YouTube. In order to facilitate our study we consider a VARX model with non-structured data as exogenous to obtain the best estimation and we perform tests against several univariate models in terms of best fit performance and forecasting. (C) 2017 Elsevier Ltd. All rights reserved.
机译:数据管理工具和分析为管理人员提供了机会,使他们不再通过仅检查从ERP系统中聚集的数据,而是考虑来自客户在线购买行为的互联网信息,将库存绩效视为一项持续的活动。通过对结构化,半结构化和非结构化数据(通常称为“大数据”)进行数据和文本挖掘,以发现可能解释客户行为并改善对需求的响应的底层模式,这种复杂关系的实现已引起人们对商业智能的关注。挥发性。本文探讨了如何根据特定的客户趋势通过互联网获取更多信息,将销售结构化数据与非结构化客户数据结合使用,以改善库存管理,从而预测或将某些库存视为“最畅销商品”。通过查看有关止痛药的129周销售数据以及客户通过Google,在线报纸和YouTube寻求信息的数据,可以将其视为一种疾病。为了促进我们的研究,我们将具有非结构化数据的VARX模型视为外源性以获得最佳估计,并针对最佳拟合性能和预测对多个单变量模型进行测试。 (C)2017 Elsevier Ltd.保留所有权利。

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