| EC | 6 |
| Location | Utrecht University |
| Weeks | 6 - 20 |
| Lecture | Monday, 13:15 - 15:00 |
| Provider | 4TU |
| Links | Course page (requires login) |
Prerequisites
Basic knowledge of probability and statistics, and a sufficient level of mathematical maturity; e.g., having followed an undergraduate course in Mathematical Statistics should provide you with enough background. Familiarity with R is useful, but not required.
Aim of the course
The aim of this course is to obtain a broad knowledge of nonparametric methods in statistics. Many methods in statistics are parametric in nature. In this case the distribution of the data is assumed to be parametrized by a nite-dimensional parameter. The basic idea of nonparametric methods is to drop, or relax, this often restrictive assumption. These methods thereby oer much more exibility to model the data than classical parametric methods. The topics that we cover in this course form a mix of classical distribution free methods and more modern topics. The focus is on both application and theory of these methods. Examples will be illustrated using statistical computing tools, namely the statistical computing software R.
In this course we cover the following topics:
The first 6 weeks are dedicated to topics 1-4; weeks 7-13 are dedicated to topics 5-9 in non-parametric statistics.
Rules about Homework / Exam
Throughout the course you will be required to solve homework exercises. Some of these will be theoretical, while others will be practical, and often require the use of computational tools. It is recommended (but not mandatory) that you use the statistical computing package R for these. Homework exercises that are handed in in a timely fashion will be graded and provide extra credit points towards the final grade.
You should hand in your answers at the beginning of class (alternatively, only in exceptional cases, via email). Answers can be handwritten, but please write them clearly and be organized. I encourage you to work together in groups of two or three students maximum. (You can hand-in your answers as a group.) If answers are handed in on time these will count for the final grade.
Let E denote the exam grade and let H denote the combined homework grades (on a scale 0-10). The final grade F is computed as
F = max(0.75E+0.25H,E) if E>=5.0
F = E if E<5.0
Lecture Notes / Literature
[W]: L. Wasserman, All of Nonparametric Statistics, Springer, 2006. (ISBN 978-0-387-25145-5)
[N]: Notes and articles to be handed out during the course.
Lecturer
Paulo Serra (TUE)