Statistical modelling

StatMod_FS25
17.03.2025 - 19.03.2025
2 full days + work in between
  • 17.03.2025, 09:00 - 17:00: Statistical Modelling Day 1: Introduction to Linear Regression and OLS Estimation
  • 18.03.2025, 09:00 - 17:00: Statistical Modelling Day 2: Model Diagnostics, Robust Regression, and Variable Selection
  • 19.03.2025, 09:00 - 17:00: Statistical Modelling Day 3: Outline on advanced regression topics
Start registration period: 21.11.2024
End of registration period: 24.02.2025
ETH Zurich, centre
16
16
Students enrolled in PSC PhD Programs: CHF 0
LSZGS PhD students: CHF 0
All others: CHF 300
This comprehensive course is designed to equip participants with a deep understanding of linear regression and related advanced techniques using the statistical software R. Over three intensive days, we will cover essential concepts, hands-on exercises, and practical applications, ensuring that participants leave with the knowledge and skills needed to confidently apply these methods in real-world scenarios.

Day 1: Introduction to Linear Regression and OLS Estimation - participants will delve into the fundamentals of linear regression, gaining insights into its principles and application. We will explore Ordinary Least Squares (OLS) estimation as a cornerstone technique for parameter estimation. Additionally, we will examine various goodness-of-fit measures and hypothesis testing to assess model accuracy.

Day 2: Model Diagnostics, Robust Regression, and Variable Selection - participants will learn how to identify and address potential issues in their models. Robust regression techniques will be introduced to handle outliers and non-normally distributed data. Furthermore, we will explore variable selection methods to refine and optimize models.

Day 3: Outline on advanced regression topics: Nonlinear Regression, Splines, and General Additive Models These techniques are essentially used to uncover non-linearities and improve the linear model through the insights gained from the non-linear techniques. Participants will showcase their newfound knowledge and insights in presentations.
Prof. Matthias Templ
1
PhD students
Postdocs if places available
Basic knowledge of the R language would be ideal, but is not essential. Participants without prior knowledge in R will be sent some preparatory material in advance. Please demand it.
English
In order to obtain the credit points, participants are required to attend all course days and hand in an assignment to be carried out at home. The details will be ex-plained during the course. The assignment is due no later than one week after the course has ended.

By registering you agree to the PSC course terms and conditions AGBs

Arrange cancellation with the PSC coordination office (psc_phdprogram@ethz.ch): Up to 2 weeks prior to course start without a fine.
Later cancellations and incomplete attendance without documented justification will incur a fee of 200 CHF.
Students are required to bring their own computers, with the latest version of R down- loaded from https://cran.r-project.org/. As an editor for R, we recommend to install the free desktop version of https://www.rstudio.com as well.

Zurich-Basel Plant Science Center

Dr. Bojan Gujas (bojan.gujas@usys.ethz.ch)
FS25_StatisticalModelling.pdf
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