142.090 Statistics
This course is in all assigned curricula part of the STEOP.
This course is in at least 1 assigned curriculum part of the STEOP.

2021S, VO, 2.0h, 3.0EC

Properties

  • Semester hours: 2.0
  • Credits: 3.0
  • Type: VO Lecture
  • Format: Online

Learning outcomes

After successful completion of the course, students are able to understand and apply the most important statistical methods required for the analysis of experimental data: graphical representation, computation of characteristic numbers, estimation of unknown parameters, testing of hypotheses, fitting of linear regression models. The students can select and apply appropriate methods for specific areas of application.

Subject of course

1. Descriptive statistics: How do I present my data in a concise, but meaningful way? 2. Stochastic modeling: How do I construct a model of my data that correctly describes the random aspects of an experiment, and which models are relevant in the experimenter's practice? 3. Parametric estimation, confidence intervals: How do I estimate physical quantities from my data, and how do I asses the uncertainty of the estimates? 4. Parametric tests: How do I test whether my data show significant deviations from theory? ? 5. Linear regression: Is there a correlation between two or more observed quantities, and how is it quantified?

Teaching methods

Practical demonstration of the methods on real or simulated data sets that are representative for the experimental situation. All algorithms are implemented in Matlab and will be given to the students along with the data sets.

Mode of examination

Written

Additional information

The course is held online! URL: https://global.gotomeeting.com/join/410585245

 

Lecturers

Institute

Course dates

DayTimeDateLocationDescription
Thu08:15 - 09:4504.03.2021 - 24.06.2021Sem.R. DA grün 06B (LIVE)Statistics
Statistics - Single appointments
DayDateTimeLocationDescription
Thu04.03.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu11.03.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu18.03.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu25.03.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu15.04.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu22.04.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu29.04.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu06.05.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu13.05.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu20.05.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu27.05.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu03.06.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu10.06.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu17.06.202108:15 - 09:45Sem.R. DA grün 06B Statistics
Thu24.06.202108:15 - 09:45Sem.R. DA grün 06B Statistics

Examination modalities

Written examination. Pocket calculator and tables are required. A formula collection of up to 8 pages A4 is allowed. 

Exams

DayTimeDateRoomMode of examinationApplication timeApplication modeExam
Mon10:00 - 12:0001.07.2024Sem.R. DA grün 05 written03.06.2024 09:00 - 26.06.2024 12:00TISS1. Prüfung 2024S
Thu10:00 - 12:0004.07.2024FH Hörsaal 3 - MATH written03.06.2024 09:00 - 01.07.2024 12:00TISS2. Prüfung 2024S
Fri10:00 - 12:0027.09.2024FH Hörsaal 3 - MATH written02.09.2024 09:00 - 23.09.2024 12:00TISS3. Prüfung 2024S

Course registration

Begin End Deregistration end
08.02.2021 09:00 08.03.2021 18:00 09.03.2021 09:00

Curricula

Study CodeObligationSemesterPrecon.Info
033 261 Technical Physics Not specified
066 460 Physical Energy and Measurement Engineering Mandatory2. Semester
066 461 Technical Physics Mandatory2. Semester

Literature

 The slides and the handout (2 or 4 slides per page) can be downloaded by the students.

The course is also based on my ebook  "Wahrscheinlichkeitsrechnung und Statistik: Für Studierende der Physik" (in German). It can be downloaded free of charge from:

http://bookboon.com/de/wahrscheinlichkeitsrechnung-und-statistik-eboo

For the exam you will also need the tables.

Further recommended books:

L. Lyons, A practical guide to data analysis for physical science students, Cambridge University Press, 1991.

L. Lyons, Statistics for Nuclear and Particle Physicists, Cambridge University Press, 1986.

W. Stahel, Statistische Datenanalyse: Eine Einführung für Naturwissenschaftler, Vieweg+Teubner, 2007.

V. Blobel und E. Lohrmann, Statistische und numerische Methoden der Datenanalyse, Teubner, 1998. L. Fahrmeir et al., Statistik: Der Weg zur Datenanalyse, Springer, 2007.

S. M. Ross, Statistik für Ingenieure und Naturwissenschaftler, Spektrum, 2006.

Previous knowledge

Elementary Differential and integral calculus, basic linear algebra.

Language

German