A Cross-View Hierarchical Graph Learning Hypernetwork for Skill Demand-Supply Joint Prediction

Wenshuo Chao, Zhaopeng Qiu, Likang Wu, Zhuoning Guo, Zhi Zheng, Hengshu Zhu, Hao Liu
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Abstract

The rapidly changing landscape of technology and industries leads to dynamic skill requirements, making it crucial for employees and employers to anticipate such shifts to maintain a competitive edge in the labor market. Existing efforts in this area either relies on domain-expert knowledge or regarding the skill evolution as a simplified time series forecasting problem. However, both approaches overlook the sophisticated relationships among different skills and the inner-connection between skill demand and supply variations. In this paper, we propose a Cross-view Hierarchical Graph learning Hypernetwork (CHGH) framework for joint skill demand-supply prediction. Specifically, CHGH is an encoder-decoder network consisting of i) a cross-view graph encoder to capture the interconnection between skill demand and supply, ii) a hierarchical graph encoder to model the co-evolution of skills from a cluster-wise perspective, and iii) a conditional hyper-decoder to jointly predict demand and supply variations by incorporating historical demand-supply gaps. Extensive experiments on three real-world datasets demonstrate the superiority of the proposed framework compared to seven baselines and the effectiveness of the three modules.
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用于技能供需联合预测的跨视图层次图学习超网络
技术和行业的快速变化导致技能要求的动态变化,因此,雇员和雇主必须预测这种变化,以保持在劳动力市场上的竞争优势。该领域的现有研究要么依赖领域专家的知识,要么将技能演变视为一个简化的时间序列预测问题。然而,这两种方法都忽略了不同技能之间的复杂关系以及技能需求和供给变化之间的内在联系。在本文中,我们提出了一种用于技能供需联合预测的跨视图分层图学习超网络(Cross-view Hierarchical Graph learning Hypernetwork,CGH)框架。具体来说,CHGH 是一个编码器-解码器网络,包括 i) 一个跨视图图编码器,用于捕捉技能需求和供给之间的相互联系;ii) 一个分层图编码器,用于从集群的角度对技能的共同演化进行建模;iii) 一个条件超解码器,用于通过纳入历史供需缺口来联合预测需求和供给的变化。在三个真实世界数据集上进行的广泛实验证明,与七个基线相比,所提出的框架更有优势,而且三个模块都很有效。
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