Okun’s law and spatial regimes in Indonesia: A machine learning approach

Abstract

We study how output growth translates into unemployment changes across districts in Indonesia, over the 2011–2020 period. Instead of imposing predetermined geographic groups, we apply a data-driven approach (classification-Lasso) to identify districts with similar growth–unemployment dynamics. We find that the growth–unemployment relationship (Okun’s law) varies markedly across districts: growth substantially reduces unemployment in some, while it is negligible or even reversed in others. To account for spatial dependence across districts, we estimate spatial models that decompose the total effect into each district’s own response and spillovers from neighboring districts. These spillovers are both statistically significant and economically sizeable, suggesting that growth shocks diffuse well beyond individual district borders. Overall, our findings underscore the limitations of aggregate Okun estimates and the need for policies that are locally tailored and coordinated across neighboring regions.

Publication
In Economic Modelling
Tifani Husna Siregar
Tifani Husna Siregar
Postdoctoral Fellow, Interdisciplinary Research Center for Finance and Digital Economy, King Fahd University of Petroleum and Minerals

My research interests include topics in labor markets, applied econometrics, including spatial econometrics, as well as the use of big data, especially GIS/satellite data. Currently, I am also working on the economic effects of fintech.