Systematic Mapping Study of Sales Forecasting: Methods, Trends, and Future Directions

Hamid Ahaggach, L. Abrouk, Eric Lebon
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引用次数: 0

Abstract

In a dynamic business environment, the accuracy of sales forecasts plays a pivotal role in strategic decision making and resource allocation. This article offers a systematic review of the existing literature on techniques and methodologies used in forecasting, especially in sales forecasting across various domains, aiming to provide a nuanced understanding of the field. Our study examines the literature from 2013 to 2023, identifying key techniques and their evolution over time. The methodology involves a detailed analysis of 516 articles, categorized into classical qualitative approaches, traditional statistical methods, machine learning models, deep learning techniques, and hybrid approaches. The results highlight a significant shift towards advanced methods, with machine learning and deep learning techniques experiencing an explosive increase in adoption. The popularity of these models has surged, as evidenced by a rise from 10 articles in 2013 to over 110 by 2023. This growth underscores their growing prominence and effectiveness in handling complex time series data. Additionally, we explore the challenges and limitations that influence forecasting accuracy, focusing on complex market structures and the benefits of extensive data availability.
销售预测的系统制图研究:方法、趋势和未来方向
在动态的商业环境中,销售预测的准确性对战略决策和资源分配起着举足轻重的作用。本文系统回顾了现有文献中有关预测(尤其是跨领域销售预测)所使用的技术和方法,旨在提供对该领域的细微理解。我们的研究考察了 2013 年至 2023 年的文献,确定了关键技术及其随时间的演变。研究方法包括对 516 篇文章进行详细分析,分为经典定性方法、传统统计方法、机器学习模型、深度学习技术和混合方法。研究结果突出显示了向先进方法的重大转变,机器学习和深度学习技术的采用呈爆炸式增长。这些模型的受欢迎程度急剧上升,从2013年的10篇文章增加到2023年的110多篇就是证明。这一增长凸显了它们在处理复杂时间序列数据方面日益突出的地位和有效性。此外,我们还探讨了影响预测准确性的挑战和限制,重点关注复杂的市场结构和广泛数据可用性的益处。
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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CiteScore
5.80
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