Taming the Black Swan: A Momentum-Gated Hierarchical Optimisation Framework for Asymmetric Alpha Generation
2026-04-10 • Computational Engineering, Finance, and Science
Computational Engineering, Finance, and ScienceInformation Retrieval
AI summaryⓘ
The authors studied a new investment strategy called AEGIS to fix problems with usual momentum trading, which often suffers big losses when markets suddenly reverse. Their method adjusts how much it follows trends based on volatility and spreads risk by reducing correlated investments. They tested it over 20 years, including major financial crises, and found it performed better than the S&P 500 with less risk, matching returns of riskier tech stocks but with more stability. This shows their approach can combine growth like focused stock picks with safety like a diversified portfolio.
momentum strategyvolatilitydrawdownsportfolio diversificationsortino ratiosequential least squares programmingmarket regimessynthetic betacorrelationcapital allocation
Authors
Arya Chakraborty, Randhir Singh
Abstract
Conventional momentum strategies, despite their proven efficacy in generating alpha, frequently suffer from the "Winner's Curse", a structural vulnerability in which high performing assets exhibit clustered volatility and severe drawdowns during market reversals. To counteract this propensity for momentum crashes, this study presents the Adaptive Equity Generation and Immunisation System (AEGIS), a novel framework that fundamentally reengineers the trade-off between growth and stability. By leveraging a volatility-adjusted momentum filter to identify trend strength and employing a minimax correlation algorithm to enforce structural diversification, the model utilises sequential least squares programming (SLSQP) to optimise capital allocation for the sortino ratio. This architecture allows the portfolio to dynamically adapt to distinct market regimes: explicitly lowering the intensity of crashes during bear markets by decoupling correlated risks, while retaining asymmetric upside participation during bull runs. Empirical validation via a comprehensive 20-year walk-forward backtest (2006-2025), which covers significant stress events like the 2008 Global Financial Crisis, confirms that the framework produces substantial excess alpha relative to the standard S&P 500 benchmark. Notably, the strategy successfully matched the capital appreciation of the high-beta NASDAQ-100 index while achieving significantly reduced downside volatility and improved structural resilience. These results suggest that synthetic beta can be effectively engineered through mathematical regularisation, enabling investors to capture the high-growth characteristics of concentrated portfolios while preserving the defensive stability typically associated with broad-market diversification.