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Abstract
In a first part, the basic ideas of robust fitting techniques are explained theoretically and practically using regression models and explorative multivariate analysis.The second part addresses the challenges of fitting nonlinear regression functions and finding reliable confidence intervals.
Objective
Participants are familiar with common robust fitting methods for the linear regression models as well as for exploratory multivariate analysis and are able to assess their suitability for the data at hand. They know the challenges that arise in fitting of nonlinear regression functions, and know the difference between classical and profile based methods to determine confidence intervals. They can apply the discussed methods in practise by using the statistics software R.
Content
Robust fitting: influence function, breakdown point, regression M-estimation, regression MM-estimation, robust inference, covariance estimation with high breakdown point, application in principal component analysis and linear discriminant analysis. Nonlinear regression: the nonlinear regression model, estimation methods, approximate tests and confidence intervals, estimation methods, profile t plot, profile traces, parameter transformation, prediction and calibration
Resources
Lecture Notes
Lecture notes are available
Learning Materials (Links)
- Main link
- Nonlinear and Robust Regression
General Information
- Language
- English
- Levels
- MSC
- Frequency
- Every two years
Examination
- Type
- ungraded semester performance
Course Components
| Type | Title | Time & Place | Hours |
|---|---|---|---|
| lecture with exercise |
Robust Regression
Does not take place this semester.
Block course
|
No time listed | 10.5 h semesterly |
| lecture with exercise |
Nonlinear Regression
Does not take place this semester.
Block course
|
No time listed | 10.5 h semesterly |
Offered In
-
Statistics Master (The following courses belong to the curriculum of the Master's Programme in Statistics. The corresponding credits do not count as external credits even for course units where an enrolment at ETH Zurich is not possible.)