A central focus of the course is the Central Limit Theorem, a key statistical concept that underpins much of inferential statistics. Through examples and hands-on exercises, students will learn how the CLT allows statisticians to approximate the distribution of sample means as normal, even when the population distribution is not normal. This property is foundational to many statistical methods, such as hypothesis testing and confidence interval estimation. Understanding the CLT enables students to appreciate the role of sample size, as larger samples yield distributions of sample means that are more consistently normal and provide a closer approximation of population parameters.
Join Telegram Channel burnercontents!
Sampling, Central Limit Theorem, & Standard Error, , ,#Sampling #Central #Limit #Theorem #Standard #Error,