Lecture

Multivariate Distributions: Spherical and Elliptical

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Description

This lecture covers topics related to spherical and elliptical distributions, including definitions, properties, and examples. It also discusses normal variance mixtures, factor models, and principal component analysis in the context of quantitative risk management.

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