This lecture covers advanced topics in regression analysis, focusing on distributional checks, weighted least squares, and hypothesis testing in the least squares set-up. It discusses the importance of general assumptions in the Gaussian linear regression model, the detection and handling of outliers, and diagnostic tools for model evaluation.