Predicting Economic Recessions Using Machine Learning Algorithms
Rickard Nyman, Paul Ormerod

TL;DR
This paper demonstrates that random forest machine learning models, using financial market data, can provide early warnings of economic recessions, outperforming traditional forecasts especially for predictions six quarters ahead.
Contribution
It introduces the application of random forests to recession prediction using readily available financial data, showing potential for early warning signals beyond traditional methods.
Findings
Random forests can predict recessions up to six quarters in advance.
The model's predictions are significantly correlated with actual recession timings.
It performs well in both the US and UK contexts.
Abstract
Even at the beginning of 2008, the economic recession of 2008/09 was not being predicted. The failure to predict recessions is a persistent theme in economic forecasting. The Survey of Professional Forecasters (SPF) provides data on predictions made for the growth of total output, GDP, in the United States for one, two, three and four quarters ahead since the end of the 1960s. Over a three quarters ahead horizon, the mean prediction made for GDP growth has never been negative over this period. The correlation between the mean SPF three quarters ahead forecast and the data is very low, and over the most recent 25 years is not significantly different from zero. Here, we show that the machine learning technique of random forests has the potential to give early warning of recessions. We use a small set of explanatory variables from financial markets which would have been available to a…
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Taxonomy
TopicsMonetary Policy and Economic Impact · Market Dynamics and Volatility · Stock Market Forecasting Methods
