Financial Engineering Seminar Series: Beyond the Ellipse - The Virtue of Nonlinearity in Asset Pricing

Stock Market Chart on Blue Background

Abstract

Nonlinear machine learning (ML) models are increasingly used to predict the cross-section of stock returns, yet the economic justification for their nonlinear gains remains underexplored. Building on an equilibrium-based framework, this study shows that nonlinear MLs are most valuable when stock payoffs deviate from elliptical distributions (e.g. regime-switching) and that nonlinear gains arise when there is uncertainty about the likelihood of such deviations. Consistent with the model’s predictions, empirical tests show that nonlinear models significantly outperform linear ones among stocks with high idiosyncratic skewness and growth-related attributes, and during periods of elevated market volatility. In terms of explainability, the predictive edge of nonlinear ML models over their linear counterparts arises from their superior ability to capture well-documented firm level anomaly signals.

Biography

Shengyu (Henry) Huang is a Ph.D. candidate in Financial Engineering at Stevens Institute of Technology and will join the College of Business and Technology at Winthrop University in Fall 2026. His research focuses on empirical asset pricing and interpretable machine learning, with particular emphasis on the role of nonlinear models in financial prediction and market outcomes. His dissertation examines nonlinear asset pricing and financial stability, with applications to stock return predictability and bank complexity. He recently published Watching the FedWatch in the Journal of Futures Markets, documenting the predictive accuracy and economic value of market-implied monetary policy trackers.

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