利用图神经网络丰富产品关系信息的需求预测

Yaren Yilmaz, Ş. Öğüdücü
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引用次数: 0

摘要

需求预测对于零售企业提高利润和客户满意度至关重要。尽管最近的研究表明,最先进的机器学习和深度学习模型在需求预测方面取得了成功,但使用基于图的特征表示来丰富数据集以改进需求预测模型仍然很少。在这项研究中,我们提出了一个需求预测模型,该模型使用基于图的产品嵌入来预测需求。与大多数现有方法不同,该方法使用销售信息数据提取关系,并利用若干关系构造图。使用Node2Vec和GraphSAGE算法,评估了五种不同的嵌入以反映产品的不同关系。由于能够处理高度稀疏的数据,极端梯度增强回归器(XGBR)比其他模型更受欢迎。为了观察和比较不同模型的结果,我们还实现了长短期记忆(LSTM)。使用公共零售数据集对性能进行了评估,结果表明,使用基于Node2Vec图的XGBR嵌入,所提出的模型误差较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enriching demand prediction with product relationship information using graph neural networks
Demand prediction is crucial for companies in the retail industry to increase their profit and customer satisfaction. Although recent studies show the success of state-of-art machine learning and deep learning models in demand prediction, enriching datasets using graph-based feature representations to improve demand forecasting models is still rare. In this study, we propose a demand forecasting model that forecasts demand with the usage of graph-based product embeddings. Unlike most of the existing methods, the sale information data is used to extract the relations and several relationships are utilized to construct graphs. Using the Node2Vec and GraphSAGE algorithms, five different embeddings are evaluated to reflect the different relationships of products. Extreme Gradient Boosting Regressor (XGBR) is preferred over other models because of the ability to handle high sparse data. In order to observe and compare the results of different models, we also implement Long Short Term Memory (LSTM). The performance is evaluated using a public retail dataset and the results show that the proposed model gives less error using Node2Vec graph-based embedding with XGBR.
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