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Lecture
Spherical & Elliptical Distributions
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Related lectures (30)
Elliptical Distributions: Properties and Applications
Covers elliptical distributions, including properties, applications, and risk management implications.
Quantitative Risk Management: Distributions and Techniques
Covers distributions and techniques in Quantitative Risk Management for financial modeling.
Multivariate Distributions: Spherical and Elliptical
Explores spherical and elliptical distributions, normal variance mixtures, factor models, and principal component analysis.
Multivariate Statistics: Conditional Distributions
Covers conditional distributions and correlations in multivariate statistics, including partial variance and covariance, with applications to non-normal distributions.
Multivariate Statistics: Normal Distribution
Introduces multivariate statistics, covering normal distribution properties and characteristic functions.
Dependence Concepts and Copulas
Explores dependence concepts, copulas, correlation fallacies, and rank correlations in statistics.
Multivariate Statistics: Normal Distribution
Covers the multivariate normal distribution, properties, and sampling methods.
Copulas: Properties and Applications
Explores copulas in multivariate statistics, covering properties, fallacies, and applications in modeling dependence structures.
Continuous Random Variables
Explores continuous random variables, density functions, joint variables, independence, and conditional densities.
Multivariate Normal Distribution: Correlation and Covariance
Covers correlation, covariance, empirical estimates, eigenvalues, normality testing, and factor models.
Probability Distributions: Central Limit Theorem and Applications
Discusses probability distributions and the Central Limit Theorem, emphasizing their importance in data science and statistical analysis.
Probability Distributions in Environmental Studies
Explores probability distributions for random variables in air pollution and climate change studies, covering descriptive and inferential statistics.
Probability and Statistics
Explores joint random variables, conditional density, and independence in probability and statistics.
Introduction to Continuous Random Variables: Probability Distributions
Introduces continuous random variables and their probability distributions, emphasizing their applications in statistics and data science.
Random Vectors & Distribution Functions
Covers random vectors, joint distribution, conditional density functions, independence, covariance, correlation, and conditional expectation.
Joint Distributions
Explores joint distributions, marginal laws, covariance, correlation, and variance properties.
Principal Component Analysis: Introduction
Introduces Principal Component Analysis, focusing on maximizing variance in linear combinations to summarize data effectively.
Multivariate Statistics: Introduction and Methods
Introduces major statistical methodologies for uncovering associations between vector components in multivariate data.
Copulas: Dependence Modeling
Covers copulas, Sklar's Theorem, types of copulas, and simulation of copulas for risk management.
Continuous Random Variables
Covers continuous random variables, probability density functions, and distributions, with practical examples.
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