1) The document reviews concepts from probability and statistics including discrete and continuous random variables, their distributions (e.g. binomial, Poisson, normal), and multivariate distributions.
2) It then discusses key properties of multivariate normal distributions including their probability density function and how marginal and conditional distributions can be derived from the joint distribution.
3) Concepts like independence, mean vectors, covariance matrices, and their implications are also covered as they relate to multivariate normal distributions.