基于图神经网络的工程设计产品竞争预测

Faez Ahmed, Yaxin Cui, Yan Fu, Wei Chen
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引用次数: 2

摘要

了解市场系统中不同产品之间的关系,并预测设计变化如何影响其市场地位,可以帮助公司创造更好的产品。我们提出了一种基于图神经网络的产品之间关系建模方法,其中网络中的节点代表产品,边代表它们之间的关系。我们的建模能够以系统的方式预测未来几年未见产品之间的关系。当应用于中国汽车市场案例研究时,我们基于归纳图神经网络方法GraphSAGE的方法与现有的基于指数随机图模型的预测汽车共考虑关系的网络建模方法相比,产生了两倍的链接预测性能。我们的工作还克服了传统网络建模方法的可扩展性和多种数据类型相关的限制,通过建模大量的属性,混合分类和数字属性,以及看不见的产品。虽然一个普通的GraphSAGE需要一个局部网络来进行预测,但我们用一个“邻接预测模型”来增强它,以绕过需要邻域信息的限制。最后,我们展示了从基于排列的可解释性分析中获得的见解如何帮助制造商理解设计属性如何影响产品关系的预测。总的来说,这项工作提供了一种系统的数据驱动方法来预测复杂网络(如汽车市场)中产品之间的关系。
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Product Competition Prediction in Engineering Design Using Graph Neural Networks
Understanding relationships between different products in a market system and predicting how changes in design impact their market position can be instrumental for companies to create better products. We propose a graph neural network-based method for modeling relationships between products, where nodes in a network represent products and edges represent their relationships. Our modeling enables a systematic way to predict the relationship links between unseen products for future years. When applied to a Chinese car market case study, our method based on an inductive graph neural network approach, GraphSAGE, yields double the link prediction performance compared to an existing network modeling method—exponential random graph model-based method for predicting the car co-consideration relationships. Our work also overcomes scalability and multiple data type-related limitations of the traditional network modeling methods by modeling a larger number of attributes, mixed categorical and numerical attributes, and unseen products. While a vanilla GraphSAGE requires a partial network to make predictions, we augment it with an “adjacency prediction model” to circumvent the limitation of needing neighborhood information. Finally, we demonstrate how insights obtained from a permutation-based interpretability analysis can help a manufacturer understand how design attributes impact the predictions of product relationships. Overall, this work provides a systematic data-driven method to predict the relationships between products in a complex network such as the car market.
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