Multivariate Statistical Methods
The aim of the course is concerned with statistical methods for describing and analyzing multivariate data, such as Multivariate descriptive statistics, multivariate normal (MVN) distribution, multivariate analysis of variance (MANOVA) and multivariate regression analysis. This course provide students with the supporting knowledge necessary for making proper interpretations, selecting appropriate techniques of multivariate statistical methods
Topics of the course:
Introduction to multivariate analysis.
Matrix and Vector Algebra. Multivariate Descriptive Statistics. Mean Vectors , Covariance and Correlation Matrices
Multivariate Normal (MVN) distribution. Properties of (MVN). Sampling from (MVN) distribution. The Multivariate Normal Likelihood. The Sampling Distribution of mean sample and S.
Inference about mean vector. Hotelling's T-square, Confidence Regions and Simultaneous Comparisons of Component Means
Comparison of Several Multivariate Population Means, Paired Comparisons and a Repeated Measures Design
Testing for Equality of Covariance Matrices, Multivariate Analysis of Variance (MANOVA), One-Way and Two-Way MANOVA
Multivariate Linear Regression Model, Multivariate Multiple Regression
Principal Components analysis