Why Mean-Variance Optimization Breaks Down (opens in new tab)
Mean-Variance Optimization remains the intellectual cornerstone of modern portfolio theory, yet its real-world deployment via plug-in MVO often delivers unstable, over-leveraged portfolios that collapse out-of-sample. The core insight from VertoxQuant's analysis is profound: raw plug-in MVO does not merely propagate estimation error—it systematically amplifies it. This error-maximization phenomenon occurs because the optimizer's inverse-covariance operator assigns extreme weights to direction...
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