Spurious Predictability in Financial Machine Learning
Abstract
Adaptive specification search generates statistically significant backtests even under martingale-difference nulls. We introduce a falsification audit testing complete predictive workflows against synthetic reference classes, including zero-predictability environments and microstructure placebos. Workflows generating significant walk-forward evidence in these environments are falsified. For passing workflows, we quantify selection-induced performance inflation using an absolute magnitude gap linking optimized in-sample evidence to disjoint walk-forward realizations, adjusted for effective multiplicity. Simulations validate extreme-value scaling under correlated searches and demonstrate detection power under genuine structure. Empirical case studies confirm that many apparent findings represent methodological artifacts rather than genuine predictability.
Keywords
Cite
@article{arxiv.2604.15531,
title = {Spurious Predictability in Financial Machine Learning},
author = {Sotirios D. Nikolopoulos},
journal= {arXiv preprint arXiv:2604.15531},
year = {2026}
}
Comments
49 pages, 10 figures. The QuantAudit R package and full replication scripts will be made publicly available upon journal publication