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Beyond Correlation: Positive Definite Dependence Measures for Robust Inference, Flexible Scenarios, and Causal Modeling for Financial Portfolios

Beyond Correlation: Positive Definite Dependence Measures for Robust Inference, Flexible Scenarios, and Causal Modeling for Financial Portfolios ArXiv ID: 2504.15268 “View on arXiv” Authors: Unknown Abstract We live in a multivariate world, and effective modeling of financial portfolios, including their construction, allocation, forecasting, and risk analysis, simply is not possible without explicitly modeling the dependence structure of their assets. Dependence structure can drive portfolio results more than the combined effects of other parameters in investment and risk models, but the literature provides relatively little to define the finite-sample distributions of dependence measures under challenging, real-world financial data conditions. Yet this is exactly what is needed to make valid inferences about their estimates, and to use these inferences for essential purposes such as hypothesis testing, dynamic monitoring, realistic and granular scenario and reverse scenario analyses, and mitigating the effects of correlation breakdowns during market upheavals. This work develops a new and straightforward method, Nonparametric Angles-based Correlation (NAbC), for defining the finite-sample distributions of any dependence measure whose matrix of pairwise associations is positive definite (e.g. Pearsons, Kendalls, Spearmans, the Tail Dependence Matrix, and others). The solution remains valid under marginal asset distributions characterized by notably different and varying degrees of serial correlation, non-stationarity, heavy-tailedness, and asymmetry. Importantly, it provides p-values and confidence intervals at the matrix level, even when selected cells in the matrix are frozen, thus enabling flexible, granular, and realistic scenarios, reverse scenarios, and stress tests. Finally, when applied to directional dependence measures, NAbC enables accurate DAG recovery in causal modeling. NAbC stands alone in providing all of these capabilities simultaneously, and should prove to be a very useful means by which we can better understand and manage financial portfolios in our multivariate world. ...

April 21, 2025 · 3 min · Research Team

Copulas forFinance- A Reading Guide and Some Applications

Copulas forFinance- A Reading Guide and Some Applications ArXiv ID: ssrn-1032533 “View on arXiv” Authors: Unknown Abstract Copulas are a general tool to construct multivariate distributions and to investigate dependence structure between random variables. However, the concept of cop Keywords: Copulas, Multivariate Distributions, Dependence Structure, Random Variables, Statistical Modeling, Quantitative Methods Complexity vs Empirical Score Math Complexity: 7.5/10 Empirical Rigor: 2.0/10 Quadrant: Lab Rats Why: The paper focuses on theoretical copula constructions and dependence structures with advanced mathematics, but lacks implementation details, backtests, or empirical data. flowchart TD A["Research Goal:<br>Review Copulas for Finance"] --> B["Key Methodology:<br>Literature Review & Analysis"] B --> C["Data/Input:<br>Financial Return Datasets<br>and Models"] C --> D["Computational Process:<br>Model Fitting &<br>Dependence Estimation"] D --> E["Key Outcomes:<br>Capturing Non-Linear Dependence<br>and Risk Assessment"]

November 26, 2007 · 1 min · Research Team