利用空间图神经网络预测产品需求

Jiale Li, Li Fan, Xuran Wang, Tiejiang Sun, Mengjie Zhou
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引用次数: 0

摘要

在快速发展的在线市场中,准确预测二手商品的需求对卖家来说是一项重大挑战,会影响定价策略、产品展示和营销投资。传统的需求预测方法虽然具有基础性,但往往无法解决电子商务数据的动态性和异构性问题,这些数据包括文本描述、视觉元素、地理背景和时间动态。本文介绍了一种利用图神经网络(GNN)的新方法,即 SGNN,通过利用在线销售数据中固有的空间关系来提高需求预测的准确性。利用第四届 Kaggle 竞赛提供的丰富数据集,我们构建了市场的空间感知图表示法,并整合了先进的注意力机制来提高预测准确性。我们的方法将产品需求预测问题定义为归因图上的回归任务,同时捕捉对准确预测至关重要的局部和全局空间依赖关系。通过注意力感知信息传播和节点级需求预测,我们的模型有效地解决了电子商务需求预测所面临的多方面挑战,表现出优于传统统计方法、机器学习技术甚至深度学习模型的性能。实验结果验证了我们基于 GNN 的方法的有效性,为卖家在复杂的在线市场中游刃有余提供了可行的见解。这项研究不仅有助于电子商务需求预测方面的学术探讨,还为未来的应用提供了一个可扩展、可调整的框架,为制定更明智、更有效的在线销售战略铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Product Demand Prediction with Spatial Graph Neural Networks
In the rapidly evolving online marketplace, accurately predicting the demand for pre-owned items presents a significant challenge for sellers, impacting pricing strategies, product presentation, and marketing investments. Traditional demand prediction methods, while foundational, often fall short in addressing the dynamic and heterogeneous nature of e-commerce data, which encompasses textual descriptions, visual elements, geographic contexts, and temporal dynamics. This paper introduces a novel approach utilizing the Graph Neural Network (GNN) to enhance demand prediction accuracy by leveraging the spatial relationships inherent in online sales data, named SGNN. Drawing from the rich dataset provided in the fourth Kaggle competition, we construct a spatially aware graph representation of the marketplace, integrating advanced attention mechanisms to refine predictive accuracy. Our methodology defines the product demand prediction problem as a regression task on an attributed graph, capturing both local and global spatial dependencies that are fundamental to accurate predicting. Through attention-aware message propagation and node-level demand prediction, our model effectively addresses the multifaceted challenges of e-commerce demand prediction, demonstrating superior performance over traditional statistical methods, machine learning techniques, and even deep learning models. The experimental findings validate the effectiveness of our GNN-based approach, offering actionable insights for sellers navigating the complexities of the online marketplace. This research not only contributes to the academic discourse on e-commerce demand prediction but also provides a scalable and adaptable framework for future applications, paving the way for more informed and effective online sales strategies.
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