This Indico installation shall not be used to organise MPI-CBG courses and events from beginning of 2024 on. Please use MPG Indico instead.
12-28 March 2018
CSBD
Europe/Berlin timezone

Registration deadline: 31 January 2018

AIM OF THE COURSE: Experimental data is always corrupted by noise. Drawing conclusions from data therefore demands for suitable statistical methods. In this course, students will learn basic statistical concepts for analyzing and interpreting their own experimental data.

Block 1: Lectures 1 – 4 + tutorial 1 + lab will cover basic concepts of statistical inference including the t-test, the chi-squared test and linear regression. The three-hour practical will involve real world experimental data and analyzing them with the techniques discussed in the class.

Block 2: Lectures 5 – 7 + tutorial 2 are more advanced (and optional). They will cover random variables and statistical models.

LEARNING OUTCOME: Students will understand the basics of statistical inference. They will be able to apply the acquired skills to analyzing and interpreting real world experimental data.

The number of participants is limited to 20. Preference is given to DIPP PhD students

We will inform you after 31 January 2018 whether a slot in the course could be assigned to you!

Starts
Ends
Europe/Berlin
CSBD
SR2 (3rd floor)
Pfotenhauerstr. 108 01307 Dresden

LECTURER: Christoph Zechner, CSBD/MPI-CBG

(1) COURSE CONTENT BASIC BLOCK

Tue 13 Mar 2018, 11:00 - 12:00: Lecture 1: Mean, SD, SEM and presentation of data

Wed 14 Mar 2018, 11:00 - 12:00: Lecture 2: Student’s t-test

Fri 16 Mar 2018, 11:00 - 12:00: Lecture 3: Assumptions behind the t-test

Tue 20 Mar 2018, 11:00 - 12:00: Lecture 4: Chi-squared and linear regression

Wed 21 Mar 2018, 11:00 - 12:00: Tutorial 1

                               14:00 - 17:00: Lab: Statistical inference on experimental data

(2) COURSE CONTENT ADVANCED BLOCK:

Fri 23 Mar 2018, 11:00 - 12:00: Lecture 5: Probability, random variables and expectation

Tue 27 Mar 2018, 11:00 - 12:00: Lecture 6. Examples of RVs; probability distributions

Wed 28 Mar 2018, 11:00 - 12:00: Lecture 7. Non-parametric tests; Bayesian approaches

                               14:00 - 15:00: Tutorial 2

Your browser is out of date!

Update your browser to view this website correctly. Update my browser now

×