Overview
The course presents the basic techniques of resampling methods useful in statistics. These have grown very popular over the last two decades as they offer reliable alternatives to traditional asymptotic approaches, mostly based on Central Limit Theorems. The flagship instance of resampling-based approaches is the so-called `bootstrap', by now considered … For more content click the Read More button below.
Additional Enrolment Constraints
There are no prerequisites for this course. However, students are assumed to be acquainted with the basic principles of Probability and Statistics theory: random variables and their characteristics, estimators and their properties (bias, variance, consistency, asymptotic distribution), law of large numbers and central limit theorem, maximum likelihood methods. Moreover, they … For more content click the Read More button below.
Course Attributes
Offered irregularly or alternate years
Pre-2019 Handbook Editions
Access past handbook editions (2018 and prior)