A Characterization of a Subclass of Separate Ratio-Type Copulas
Keywords:
Bivariate Copulas, Ratio-Type Copulas
Abstract
Copulas are essential tools in statistics and probability theory, enabling the study of the dependence structure between random variables independently of their marginal distributions. Among the various types of copulas, Ratio-Type Copulas have gained significant attention due to their flexibility in modeling joint distributions. This paper focuses on Separate Ratio-Type Copulas, where the dependence function is a separatep roduct of univariate functions. We revisit a theorem characterizing the validity of these copulas under certain as sumptions, generalize it to broader settings, and examine the conditions for reversing the theorem in the case of concave generating functions. To address its limitations, we propose new assumptions that ensure the validity of separate copulas under specific conditions. These results refine the theoretical framework for separate copulas, extending their applicability to pure mathematics and applied fields such as finance, risk management, and machine learning.
Published
2025-08-12
How to Cite
Adwan, Z., & Sottocornola, N. (2025). A Characterization of a Subclass of Separate Ratio-Type Copulas. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-2493
Issue
Section
Research Articles
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