基于层次交互图神经网络的技术知识流预测

Huijie Liu, Han Wu, Le Zhang, Runlong Yu, Ye Liu, Chunli Liu, Qi Liu, Enhong Chen
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引用次数: 1

摘要

随着科技发展的加快,通过专利挖掘进行技术趋势预测已成为高新技术企业研究的热点问题。在这个术语中,预测技术知识流动(TKF),即预测知识从一个技术领域到另一个技术领域的定向流动,受到了广泛的关注。然而,现有的研究要么依赖于劳动密集型的实证分析,要么没有考虑到TKF固有的内在特征,包括技术节点的两面性(即既是源又是目标)、不同技术之间的多重复杂关系以及TKF过程的动态性。为此,本文进行了进一步的研究,提出了一种数据驱动的解决方案,即层次交互图神经网络(HighTKF),以自动发现技术的潜在流动趋势。具体来说,HighTKF通过每个技术节点的两种表示(扩散向量和吸收向量)进行最终预测,该预测由三个组件实现:高阶交互模块(HOI)、分层交付模块(HD)和技术流跟踪模块(TFT)。一方面,HOI和HD旨在模拟技术之间的高阶网络关系和层次关系。另一方面,TFT旨在捕捉涉及上述关系的技术的动态特征演变。此外,我们设计了一个混合损失函数,并提出了一个新的评估指标,以更好地预测前所未有的技术之间的流动。最后,我们在一个现实世界的专利数据集上进行了大量的实验,结果验证了我们方法的有效性,并揭示了技术知识流动趋势的一些有趣现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technological Knowledge Flow Forecasting through A Hierarchical Interactive Graph Neural Network
With the accelerated technology development, technological trend forecasting through patent mining has become a hot issue for high-tech companies. In this term, extensive attention has been attracted to forecasting technological knowledge flows (TKF), i.e., predicting the directional flows of knowledge from one technological field to another. However, existing studies either rely on labor intensive empirical analysis or do not consider the intrinsic characteristics inherent in TKF, including the double-faced aspects (i.e., act as both the source and target) of technology nodes, multiple complex relationships among different technologies, and dynamics of the TKF process. To this end, in this paper, we make a further study and propose a data-driven solution, i.e., a Hierarchical Interactive Graph Neural Network (HighTKF), to automatically find the potential flow trends of technologies. Specifically, HighTKF makes final predictions through two kinds of representations of each technology node (a diffusion vector and an absorption vector), which is realized by three components: High-Order Interaction Module (HOI), Hierarchical Delivery Module (HD) and Technology Flow Tracing Module (TFT). For one thing, HOI and HD aim to model high-order network relationships and hierarchical relationships among technologies. For another, TFT is designed for capturing the dynamic feature evolution of technologies with the above relations involved. Also, we design a hybrid loss function and propose a new evaluation metric for better predicting the unprecedented flows between technologies. Finally, we conduct extensive experiments on a real-world patent dataset, the results verify the effectiveness of our approach and reveal some interesting phenomenons on technological knowledge flow trends.
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