Convergence-aware Clustered Federated Graph Learning Framework for Collaborative Inter-company Labor Market Forecasting
Labor market forecasting on talent demand and supply is essential for business management and economic development. With accurate and timely forecasts, employers can adapt their recruitment strategies to align with the evolving labor market, and employees can have proactive career path planning acco...
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Zusammenfassung: | Labor market forecasting on talent demand and supply is essential for
business management and economic development. With accurate and timely
forecasts, employers can adapt their recruitment strategies to align with the
evolving labor market, and employees can have proactive career path planning
according to future demand and supply. However, previous studies ignore the
interconnection between demand-supply sequences among different companies and
positions for predicting variations. Moreover, companies are reluctant to share
their private human resource data for global labor market analysis due to
concerns over jeopardizing competitive advantage, security threats, and
potential ethical or legal violations. To this end, in this paper, we formulate
the Federated Labor Market Forecasting (FedLMF) problem and propose a
Meta-personalized Convergence-aware Clustered Federated Learning (MPCAC-FL)
framework to provide accurate and timely collaborative talent demand and supply
prediction in a privacy-preserving way. First, we design a graph-based
sequential model to capture the inherent correlation between demand and supply
sequences and company-position pairs. Second, we adopt meta-learning techniques
to learn effective initial model parameters that can be shared across
companies, allowing personalized models to be optimized for forecasting
company-specific demand and supply, even when companies have heterogeneous
data. Third, we devise a Convergence-aware Clustering algorithm to dynamically
divide companies into groups according to model similarity and apply federated
aggregation in each group. The heterogeneity can be alleviated for more stable
convergence and better performance. Extensive experiments demonstrate that
MPCAC-FL outperforms compared baselines on three real-world datasets and
achieves over 97% of the state-of-the-art model, i.e., DH-GEM, without exposing
private company data. |
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DOI: | 10.48550/arxiv.2409.19545 |