基于假日和其他事件的不同类别项目的比较时间序列分析

Shatha Ghareeb, M. Mahyoub, J. Mustafina
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引用次数: 1

摘要

日常零售额受到许多外部因素的影响,假日和特殊事件就是其中之一。一般来说,零售销售在很大程度上受到需求波动的影响,因此,零售商经常会出现一些商品缺货而另一些商品积压的情况,这是由于缺乏对每月特定时间特定商品的实际需求数量的了解而发生的。这项研究工作考察了假期或特殊事件对使用预测分析的各种物品的销售的影响。它是通过探索性的数据分析和预处理方法,然后进行特征工程和信息提取,以提取最优的输入参数馈送到模型中。数据集是时间序列数据,但是,先进的机器学习算法也与时间序列方法一起使用,以查看时间序列数据是否与非时间序列算法一起工作。本文对不同的时间序列方法以及梯度增强和Facebook先知模型进行了评估,Facebook先知模型的预测准确率达到了92.83%。梯度增强模型的MAPE值为22.25%,时间序列Holt Winters的加性方法的MAPE值为12.84%。每种算法都能很好地处理这些时间序列数据,并且可以根据业务需要选择合适的算法。
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A comparative Time Series analysis of the different categories of items based on holidays and other events
Daily retail sales are impacted by a lot of external factors, holidays and special events are one such category. In general, retail sales are largely impacted by fluctuations in demand hence, it is common for a retailer to run out of stock for some items and overstock the other items and this happens due to the lack of understanding of the actual number of items in demand for a particular item at a particular time of the month. This research work examines the impact of holidays or special events on the sales of a wide category of items using predictive analytics. It is done by performing exploratory data analysis and pre-processing methods followed by feature engineering and information extraction to extract the optimal input parameters to be fed into the model. The dataset is time-series data however, advanced machine learning algorithms are also used along with time-series methods to see if time-series data works well with non-time-series algorithms. Different time-series methods along with gradient boosting and the Facebook prophet model are evaluated in this work, achieving 92.83 % forecast accuracy with the Facebook prophet model. The gradient boosting model performs well with a MAPE value of 22.25% and time-series Holt Winters' additive method provides a MAPE value of 12.84 %. Each of the algorithms provides a good score with this time-series data and an appropriate algorithm can be chosen as per the business need.
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