Same Error, Different Function: The Optimizer as an Implicit Prior in Financial Time Series
Abstract
Neural networks applied to financial time series operate in a regime of underspecification, where model predictors achieve indistinguishable out-of-sample error. Using large-scale volatility forecasting for SP 500 stocks, we show that different model-training-pipeline pairs with identical test loss learn qualitatively different functions. Across architectures, predictive accuracy remains unchanged, yet optimizer choice reshapes non-linear response profiles and temporal dependence differently. These divergences have material consequences for decisions: volatility-ranked portfolios trace a near-vertical Sharpe-turnover frontier, with nearly turnover dispersion at comparable Sharpe ratios. We conclude that in underspecified settings, optimization acts as a consequential source of inductive bias, thus model evaluation should extend beyond scalar loss to encompass functional and decision-level implications.
Cite
@article{arxiv.2603.02620,
title = {Same Error, Different Function: The Optimizer as an Implicit Prior in Financial Time Series},
author = {Federico Vittorio Cortesi and Giuseppe Iannone and Giulia Crippa and Tomaso Poggio and Pierfrancesco Beneventano},
journal= {arXiv preprint arXiv:2603.02620},
year = {2026}
}
Comments
39 pages, 24 figures