Forecasting Labor Markets with LSTNet: A Multi-Scale Deep Learning Approach
This work addresses labor market forecasting for policymakers and economists, but it is incremental as it applies an existing LSTNet method to new data.
The paper tackled forecasting short-term employment changes and assessing long-term industry health using labor market data, achieving outperformance over baseline models across most sectors with strong alignment between their Industry Employment Health Index and actual employment volatility.
We present a deep learning approach for forecasting short-term employment changes and assessing long-term industry health using labor market data from the U.S. Bureau of Labor Statistics. Our system leverages a Long- and Short-Term Time-series Network (LSTNet) to process multivariate time series data, including employment levels, wages, turnover rates, and job openings. The model outputs both 7-day employment forecasts and an interpretable Industry Employment Health Index (IEHI). Our approach outperforms baseline models across most sectors, particularly in stable industries, and demonstrates strong alignment between IEHI rankings and actual employment volatility. We discuss error patterns, sector-specific performance, and future directions for improving interpretability and generalization.