A hybrid demand forecasting model for greater forecasting accuracy: the case of the pharmaceutical industry

Raheel Siddiqui, Muhammad Azmat, Shehzad Ahmed, S. Kummer
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引用次数: 19

Abstract

ABSTRACT In the era of modern technology, the competitive paradigm among organisations is changing at an unprecedented rate. New success measures are applied to the organisation’s supply chain performance to outperform the competition. However, this lead can only be obtained and sustained if the organisation has an effective and efficient supply chain and an appropriate forecasting technique. Thus, this study presents the demand-forecasting model, i.e., a good fit for the pharmaceutical sector, and shows promising results. Through this study, it is observed that combining forecasting algorithms can result in greater forecasting accuracies. Therefore, a combined forecasting technique ARIMA-HW hybrid1 i.e. (ARHOW) combines the Autoregressive Integrated Moving Average and Holt’ s-Winter model. The empirical findings confirm that ARHOW performs better than widely used forecasting techniques ARIMA, Holts Winter, ETS and Theta. The results of the study indicate that pharmaceutical companies can adopt this model for improved demand forecasting.
提高预测准确性的混合需求预测模型:以制药行业为例
在现代技术时代,组织之间的竞争模式正在以前所未有的速度发生变化。新的成功措施应用于组织的供应链绩效,以超越竞争对手。然而,只有在组织拥有有效和高效的供应链和适当的预测技术的情况下,这种领先才能获得和维持。因此,本研究提出的需求预测模型,即很适合制药行业,并显示出良好的结果。通过本研究发现,结合预测算法可以获得更高的预测精度。因此,ARIMA-HW hybrid1即(ARHOW)组合预测技术结合了自回归综合移动平均和Holt’s-Winter模型。实证结果证实,ARHOW的表现优于广泛使用的预测技术ARIMA、Holts Winter、ETS和Theta。研究结果表明,制药公司可以采用该模型来改进需求预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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