A Distribution-Free Neural Estimator for Mean Reversion, with Application to Energy Commodity Markets

Read the full article See related articles

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Accurate estimation of the mean-reversion speed $\alpha$ in the AR(1) process $X_{t+1} = (1-\alpha)X_t + \varepsilon_t$ is central to energy-commodity modelling. Classical estimators such as GARCH, jump-diffusion, and regime-switching produce model-conditioned estimates by embedding $\alpha$ within distributional assumptions, so that different model choices yield different $\hat{\alpha}$ values from the same series without a principled criterion to adjudicate. We propose a distribution-free estimator based on a Temporal Convolutional Network (TCN) trained on synthetic AR(1) series with Sinh-ArcSinh innovations of varying tail weight and asymmetry. The SAS family serves as a training vehicle---not a distributional hypothesis---chosen for its ability to span innovation profiles from near-Gaussian to strongly leptokurtic and skewed through its tail-weight and asymmetry parameters. Because the autocorrelation structure $\rho_k = (1-\alpha)^k$ is invariant to the marginal innovation distribution (Yule-Walker invariance), the TCN learns to extract $\alpha$ from temporal dependence alone, independently of distributional assumptions. On held-out test series the estimator outperforms all three classical estimators across the training innovation kurtosis range, with the advantage growing monotonically with non-Gaussianity. A robustness analysis on three out-of-distribution innovation families confirms stable or improved performance well beyond the training boundary. The distribution-free $\hat{\alpha}$ enables a two-stage pipeline in which $\alpha$ and the innovation distribution are characterised independently---a decoupling structurally impossible in classical likelihood-based approaches. Once trained, the TCN acts as a universal mean-reversion estimator applicable to any price series without re-fitting. Applied to four energy markets---Italian natural gas (PSV price), Italian electricity (PUN price), US Henry Hub, and US PJM West Hub---spanning log-return kurtosis from near-Gaussian to strongly heavy-tailed, the TCN yields robust, model-free estimates not conditioned on any distributional hypothesis.

Article activity feed