Neural MJD: Neural Non-Stationary Merton Jump Diffusion for Time Series Prediction
About
While deep learning methods have achieved strong performance in time series prediction, their black-box nature and inability to explicitly model underlying stochastic processes often limit their generalization to non-stationary data, especially in the presence of abrupt changes. In this work, we introduce Neural MJD, a neural network based non-stationary Merton jump diffusion (MJD) model. Our model explicitly formulates forecasting as a stochastic differential equation (SDE) simulation problem, combining a time-inhomogeneous It\^o diffusion to capture non-stationary stochastic dynamics with a time-inhomogeneous compound Poisson process to model abrupt jumps. To enable tractable learning, we introduce a likelihood truncation mechanism that caps the number of jumps within small time intervals and provide a theoretical error bound for this approximation. Additionally, we propose an Euler-Maruyama with restart solver, which achieves a provably lower error bound in estimating expected states and reduced variance compared to the standard solver. Experiments on both synthetic and real-world datasets demonstrate that Neural MJD consistently outperforms state-of-the-art deep learning and statistical learning methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Time Series Forecasting | NDBC Wave-Height | MAE0.3038 | 18 | |
| Time Series Forecasting | XAU/USD | MAE0.0061 | 18 | |
| Forecasting | Synthetic partially observed jump-diffusion process (test) | MAE0.0921 | 11 | |
| Multivariate Financial Forecasting | Multivariate Financial Data d=10 NVDA and others (302 rolling evaluation windows) | CRPS0.504 | 6 | |
| Financial Forecasting | GOOGL 2-day forecast horizon (304 rolling windows) | CRPS0.542 | 6 |