Risk Allocation Under Uncertainty is written for investors and quantitative practitioners who recognize that real-world risk does not follow normal distributions and that capital allocation must be designed for uncertainty, not equilibrium.
Most portfolio frameworks rely on variance-based risk measures and Gaussian assumptions that underestimate drawdowns, tail events, and structural breaks. In non-normal markets, these assumptions fail precisely when protection is most needed. This book reframes risk allocation around survival, information, and capital preservation, rather than optimized return profiles that collapse under stress.
The focus is on allocating capital when outcomes are asymmetric, distributions are fat-tailed, and uncertainty cannot be diversified away.
You will explore how to:
Apply entropy and information-theoretic principles to capital allocation
Design drawdown-aware allocation rules that limit path dependency
Measure and manage tail risk beyond volatility-based metrics
Allocate risk when correlations spike and diversification fails
Preserve capital across regimes marked by shocks, illiquidity, and regime shifts
Rather than treating risk as a static input, the book treats it as an evolving constraint shaped by market structure, leverage, and behavioral feedback loops. Allocation decisions are framed around how portfolios behave during adverse sequences, not just long-run averages.
The emphasis is on robustness over precision and durability over optimization. Concepts are presented with quantitative clarity and practical intuition, making them applicable to systematic traders, portfolio managers, and advanced risk practitioners operating in uncertain environments.
Risk Allocation Under Uncertainty is not about eliminating risk. It is about allocating capital intelligently when risk cannot be reliably measured, distributions are unstable, and preservation is the primary edge.