How to Get MAD: Generating Uniformly Sampled Correlation Matrices with a Fixed Mean Absolute Discrepancy
收藏Taylor & Francis Group2025-10-15 更新2026-04-16 收录
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This article describes a simple and fast algorithm for generating uniformly sampled correlation matrices (<b><i>R</i></b>) with a fixed mean absolute discrepancy (MAD) relative to a target (population) Rpop. The algorithm can be profitably used in many settings including model robustness studies and stress testing of investment portfolios, or in dynamic model-fit analyses to generate <b><i>R</i></b> matrices with a known degree of model-approximation error (as operationalized by the MAD). Using results from higher-dimensional geometry, I show that Rn×n matrices with a fixed MAD lie in the intersection of two sets that represent: (a) an elliptope and (b) the surface of a cross-polytope. When <i>n</i> = 3, these sets can be visualized as an elliptical tetrahedron and the surface of an octahedron. An online supplement includes R code for implementing the algorithm and for reproducing all of the results in the article.
提供机构:
Waller, Niels G.
创建时间:
2025-08-04



