A Projection-Based ARIMA Framework for Nonlinear Dynamics in Macroeconomic and Financial Time Series: Closed-Form Estimation and Rolling-Window Inference
About
We introduce Galerkin-ARIMA and Galerkin-SARIMA, a projection-based extension of classical ARIMA/SARIMA that replaces rigid linear lag operators with low-dimensional Galerkin basis expansions while preserving the familiar AR-MA decomposition. Experiments on synthetic series and on quarterly GDP and daily S&P 500 returns show that Galerkin-SARIMA matches or improves forecast accuracy relative to classical ARIMA/SARIMA. Estimation is closed-form via a two-stage least-squares procedure, and the closed-form two-stage estimator enables efficient rolling-window re-estimation while preserving the familiar AR-MA operator structure, facilitating applications in central bank forecasting and portfolio risk management. We establish approximation-estimation trade-offs under weak dependence, provide consistency and asymptotic distributional results for the unpenalized estimator, compare prediction risk to classical SARIMA, and propose information-criterion selection of basis size. We further develop bootstrap-based inference for exogenous factor blocks and block-bootstrap prediction intervals that account for serial dependence and the two-stage generated-regressor structure.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Interval Estimation | Real GDP rolling evaluation horizon | Coverage91.67 | 3 | |
| Interval Estimation | S&P 500 returns (rolling evaluation horizon) | Coverage97.5 | 3 | |
| One-step-ahead forecasting | Unemployment rate | MAE0.216 | 3 | |
| One-step-ahead forecasting | Real GDP | MAE0.6855 | 3 | |
| Interval Estimation | Unemployment rate rolling evaluation horizon | Coverage94.17 | 3 | |
| One-step-ahead forecasting | S&P 500 returns | Mean Absolute Error2.6218 | 3 |