GESIS Summer School in Survey Methodology

Every August since 2012, the GESIS Summer School in Survey Methodology takes place at GESIS, Cologne. Lecturers and participants from all over the world and from many different fields come to Cologne to take part in Europe's leading summer school on survey methodology, research design, and data collection -- recommended by the European Survey Research Association (ESRA).

Scientific Coordination

Dr. Sabina Haveric

Wissenstransfer
GESIS-Training

+49 (221) 47694-166
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Administrative Coordination

Angelika Ruf

Wissenstransfer
GESIS-Training

+49 (221) 47694-162
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We are happy to announce the 8th GESIS Summer School in Survey Methodology, which will take place from 01-23 August 2019 at GESIS in Cologne. If you want to take the opportunity and enjoy high quality courses on methods and techniques of survey methodology, we invite you to save the date. For more information about the program that you can book, see below.

Scholarship applications - deadline until 30. April 2019. For further details see: Link

Week 0

Short Course A: Using Mplus for Latent-Variable Modeling: An Introduction
01.08.2019 - 02.08.2019 - Dr. Matthias Bluemke, Dr. Ai Miyamoto, Dr. Clemens Lechner

Short Course B: Research Designs and Causal Inference
01.08.2019 - 02.08.2019 - Prof. Dr. Stefanie Eifler, Dr. Heinz Leitgöb

Short Course C: Introduction to Data Analysis Using Stata
01.08.2019 - 02.08.2019 - Dr. Kathrin Busch, Julia Klinger

Short Course D: Open Access to Research Data. Facing Funders’ Requirements on Making Research Data FAIR
01.08.2019 - 02.08.2019 - Dr. Sebastian Netscher, Dr. Anja Perry

Week 1

Course 01: Introduction to Survey Design
05.08.2019 - 09.08.2019 - Asst. Prof. Dr. Bella Struminskaya, Ulrich Krieger

Course 02: Introduction to Structural Equation Modeling: Confirmatory Factor Analysis with Mplus
05.08.2019 - 09.08.2019 - Prof. Dr. Jost Reinecke, Georg Kessler

Course 03: Questionnaire Design
05.08.2019 - 09.08.2019 - Prof. Dr. Marek Fuchs, Anke Metzler

Course 04: Mathematical Tools for Social Scientists: A Refresher Course with R
05.08.2019 - 09.08.2019 - Prof. Dr. Michael Greenacre, Dr. Oleg Nenadic

Week 2

Course 05: Introductory Course to R with Applications from Data Analysis
12.08.2019 - 16.08.2019 - Dr. Jan-Philipp Kolb, Alexander Murray-Watters

Course 06: Mixed Mode and Mixed Device Survey
12.08.2019 - 16.08.2019 - Prof. Dr. Edith de Leeuw, Asst. Prof. Dr. Vera Toepoel, Dr. Thomas Klausch

Course 07: Statistical Analysis of Incomplete Data
12.08.2019 - 16.08.2019 - Dr. Florian Meinfelder, Angelina Hammon

Course 08: Design and Implementation of Longitudinal Surveys
12.08.2019 - 16.08.2019 - Dr. Tarek Al Baghal, Dr. Alexandru Cernat

Week 3

Course 09: Questionnaires for Cross Cultural Surveys
19.08.2019 - 23.08.2019 - Prof. Dr. Michael Braun, Brita Dorer, Dr. Katja Hanke

Course 10: Sampling, Weighting, and Estimation
19.08.2019 - 23.08.2019 - Stephanie Eckmann, Ph.D.

Course 11: Pretesting
19.08.2019 - 23.08.2019 - Asst. Prof. Dr. Katharina Meitinger, Emily Geisen

Course 12: Factorial Survey Design
19.08.2019 - 23.08.2019 - Prof. Dr. Katrin Auspurg, Dr. Carsten Sauer

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Why attend the GESIS Summer School?

At the GESIS Summer School in Survey Methodology you will

  • receive high quality training in state of the art techniques and methods of survey research;
  • find courses that equip you with essential skills in how to design, plan, conduct, and document all kinds of surveys;
  • find courses that teach you how to analyze survey data;
  • find both courses that give a broad overview of survey methods and courses that intensively discuss special interest topics in survey research;
  • meet new people from different fields and from all over the world to network and discuss your research with;
  • enjoy a varied plenary and social program;
  • last but not least: Have an exciting time in Cologne, the "most underrated city in Germany" (New York Times).

Who should attend the GESIS Summer School?

The GESIS Summer School is made for you if you are an advanced graduate or PhD student, a post-doc, junior researcher, or survey professional from any relevant field, who:

  • is interested in improving their general knowledge and skills in survey methodology;
  • is planning to run an own survey or is working for a large-scale survey project;
  • wants to update their methodological expertise in specific areas of survey methodology;
  • wishes to engage in methodological research with survey data;
  • wants to better understand processes of data collection;
  • wants to learn how to assess data quality;
  • wants to learn how to properly analyze survey data.

Prerequisites

In addition to the prerequisites mentioned in the syllabi of the courses, you are expected to

  • have basic knowledge of empirical research methods;
  • have a good command of English, as the Summer School will entirely be held in English.

Course structure

Short courses are two-day courses that aim at updating participants’ skills to better fulfill the entrance requirements of some one-week courses or at providing instruction in a specialized area. Short courses consist of about 6 hours of classes per day.

One-week courses consist of 6 hours of classes a day of which around 2 hours are tutorials or labs or exercises (details for each course are provided in the course descriptions).

Given the daily workload, participants can register for one course per week only.

Plenary and Social Program

The GESIS Summer School offers a varied plenary and social program. Every Thursday, participants are invited to attend evening talks by Survey Methodology experts. For more details on talks, please refer to the Summer School guide that will be made available to participants some weeks before the Summer School.

As social program, participants are invited to join us in having a good time at our welcome receptions every Monday and end-of the week parties on Thursday after the evening talk. Furthermore, cultural whole day excursions will be offered at the weekends. More details on the three excursions will be made available to participants some weeks before the Summer School.

Certificates of attendance

Participants of both short courses and one-week courses will receive one certificate of attendance per course at the end of the course, provided they have attended at least 80% of the course time.

ECTS

The Graduate School of Economic and Social Sciences/Center for Doctoral Studies in Social and Behavioral Sciences (CDSS) at the University of Mannheim acknowledges the workload for regular attendance, satisfactory work on daily assignments  and successful completion of a written assignment in the form of a written paper with 4 European Credit Transfer System (ECTS) points. This only applies to main courses. Participants are asked to agree with their lecturers on a topic, prior to submitting a paper/report of about 5000 words up to 4 weeks after the end of the Summer School. ECTS points cannot be obtained only for participation in the main course. Applicants are advised to contact their home institution to inquire about the recognition of ECTS points acknowledged for regular attendance and the above mentioned course workload by the University of Mannheim. Note that you will be charged an administration fee of 50,00 € (4 ECTS) per course, respectively.

For short courses ECTS points cannot be obtained.

Fees and registration information

 Student rateAcademic/ non-profit rateCommercial rate
Short courses120 €180 €360 €
One week courses300 €450 €900 €
4 ECTS points50 €50 €50 €

Please see the Terms and conditions of participation for our cancellation and reimbursement policy.

You can book the courses here.

Scholarships

Scholarships sponsored by DAAD and ESRA are available. You can find detailed information on how to apply here.

Frequently Asked Questions (FAQ)

If you need more information or if you have further questions, have a look at our FAQ.

GESIS Summer School Archive

The schedules of past GESIS Summer Schools are available through our archive.