论文标题
使用长期短期记忆神经网络的需求预测
Demand Forecasting using Long Short-Term Memory Neural Networks
论文作者
论文摘要
在本文中,我们研究了长期短期记忆神经网络(LSTMS)在多大程度上适合在电子杂货零售领域进行需求预测。为此,开发了单变量和多元LSTM模型,并在硕士论文的背景下对100种快速移动的消费品进行了测试。平均而言,开发的模型比统计和机器学习家族的比较模型显示出更好的食品结果。仅在随机森林和线性回归的饮料区域,取得了更好的效果。该结果表明,LSTM可用于产品水平的需求预测。此处介绍的模型的性能超出了当前的研究状态,这可以从基于数据集的评估中可以看出,但不幸的是,该数据集迄今尚未公开使用。
In this paper we investigate to what extent long short-term memory neural networks (LSTMs) are suitable for demand forecasting in the e-grocery retail sector. For this purpose, univariate as well as multivariate LSTM-based models were developed and tested for 100 fast-moving consumer goods in the context of a master's thesis. On average, the developed models showed better results for food products than the comparative models from both statistical and machine learning families. Solely in the area of beverages random forest and linear regression achieved slightly better results. This outcome suggests that LSTMs can be used for demand forecasting at product level. The performance of the models presented here goes beyond the current state of research, as can be seen from the evaluations based on a data set that unfortunately has not been publicly available to date.