Product Sales Forecast Model Considering Circular Fluctuations

Keisuke Osawa, Tomoaki Tabata, Takaaki Hosoda
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Abstract

Retailers often make sales forecasts based on the purchase history data they have. When making forecasts, sales may be influenced by periodic factors such as fashion and climate, so the forecast model may consider periodicity. However, most of the proposed models deal with seasonal fluctuations. There is no doubt that seasonal fluctuations are important, but in order to improve prediction accuracy, it is necessary to pay attention to circular fluctuations as well. In this study, we identified the circular fluctuations in sales by Fourier analysis, and constructed a model with higher prediction accuracy than the conventional ARIMA model by taking that factor into consideration.
考虑循环波动的产品销售预测模型
零售商经常根据他们拥有的购买历史数据做出销售预测。在进行预测时,销售可能会受到诸如时尚和气候等周期性因素的影响,因此预测模型可能会考虑周期性。然而,大多数提出的模式都处理季节波动。毫无疑问,季节波动很重要,但为了提高预测精度,也有必要注意循环波动。在本研究中,我们通过傅里叶分析来识别销售的循环波动,并考虑到这一因素,构建了一个比传统ARIMA模型预测精度更高的模型。
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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