ArXiv TLDR

Nowcasting Italian Municipal Income with Nightlights: A Deep Learning Approach

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2605.08782

Massimo Giannini

econ.EM

TLDR

A deep learning model using NASA nightlight data accurately nowcasts Italian municipal income, outperforming traditional and spatial econometric benchmarks.

Key contributions

  • Nowcasts Italian municipal income using NASA nightlight data, addressing 12-18 month official data lags.
  • Compares deep learning RNNs (GRU, LSTM, BiLSTM, Transformer) against six econometric benchmarks.
  • A single-layer GRU model achieves a 4% median forecast error (1.07M euros) for municipal income.
  • GRU statistically outperforms all linear and spatial econometric benchmarks in out-of-sample tests.

Why it matters

This paper demonstrates deep learning's power in using satellite nightlight data for timely economic indicators. It significantly improves nowcasting local income, crucial for policy and resource allocation, especially where official data is delayed.

Original Abstract

This paper assesses whether NASA Black Marble nightlight intensity can serve as an early indicator of annual taxable income at the Italian municipal level, where official data are released with a 12--18 month lag. Using a panel of 7{,}631 municipalities over 2012--2021, we compare four recurrent neural network architectures (LSTM, BiLSTM, GRU, Transformer) against six benchmarks: simple persistence, panel fixed effects, autoregressive distributed lag, and two spatial econometric specifications (SAR, Spatial Durbin) on a queen-contiguity matrix. Models are trained on 2012--2019 and evaluated out-of-sample on 2020--2021 with a cross-sectional Diebold--Mariano test. A single-layer GRU achieves a median forecast error of 1.07 million euros across the cross-section of municipalities -- approximately $4\%$ of the median municipal IRPEF income of 29 million euros -- statistically dominating every benchmark (DM $>4$ against persistence, $>40$ against spatial linear models, all $p<0.001$). Spatial models recover statistically significant spatial autocorrelation ($ρ\approx 0.71$) and a meaningful nightlight spillover ($θ\approx 0.05$), but their forecasting gap with the GRU is virtually identical to that of spatially-naive linear specifications. We conclude that nightlights contain genuine predictive content for municipal income, but extracting it requires a model class flexible enough to capture cross-sectional heterogeneity and non-linearities that linear specifications, spatial or otherwise, cannot recover.

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