PředmětyPředměty(verze: 945)
Předmět, akademický rok 2023/2024
   Přihlásit přes CAS
Introduction to Statistics - JPB159
Anglický název: Introduction to Statistics
Zajišťuje: Katedra sociologie (23-KS)
Fakulta: Fakulta sociálních věd
Platnost: od 2023
Semestr: oba
E-Kredity: 6
Rozsah, examinace: 1/1, Zk [HT]
Počet míst: zimní:25 / 25 (25)
letní:neurčen / neurčen (25)
Minimální obsazenost: neomezen
4EU+: ne
Virtuální mobilita / počet míst pro virtuální mobilitu: ne
Stav předmětu: vyučován
Jazyk výuky: angličtina
Způsob výuky: prezenční
Způsob výuky: prezenční
Poznámka: předmět je možno zapsat mimo plán
povolen pro zápis po webu
při zápisu přednost, je-li ve stud. plánu
předmět lze zapsat v ZS i LS
Garant: PhDr. Ing. Petr Soukup, Ph.D.
Mgr. Ivan Petrúšek, Ph.D.
Vyučující: Mgr. Ivan Petrúšek, Ph.D.
PhDr. Ing. Petr Soukup, Ph.D.
Třída: Courses not for incoming students
Anotace - angličtina
Poslední úprava: PhDr. Ing. Petr Soukup, Ph.D. (19.02.2024)
Course in the summwer semester (from Februarz 2024) is only for PPE students.
All materials for the course will be availasble in SIS or Google disc:
https://drive.google.com/drive/folders/1u4wWngIPUR-Vf02dNQM-ctTIZ7WwAyPp?usp=sharing

This is a mandatory course for students of Politics, Philosophy and Economics programme. Students will learn and practice basic statistical methods by analyzing sociological survey data in a program called jamovi (freeware). As this is an introductory course, no previous knowledge of statistics is required.

Lecture is available also via MS Teams:https://teams.microsoft.com/l/meetup-join/19%3ameeting_OTMwOWUyNWEtYWQ0OC00OTJhLWFiYjUtYjM4NzYzZTcyNDNj%40thread.v2/0?context=%7b%22Tid%22%3a%2273844aaf-f10c-4dee-aaaf-5eeb27962a5d%22%2c%22Oid%22%3a%2244019797-e6cf-458d-996e-9e9b298c7895%22%7d
Podmínky zakončení předmětu - angličtina
Poslední úprava: PhDr. Ing. Petr Soukup, Ph.D. (18.09.2023)

Grading will be based on homework assignments (6 mandatory assignments, each worth 5 points) and a final exam (worth 70 points). Students may earn up to 100 total points.

Deadline for homework assignments: Monday (11:59 am) via email (assignments are submitted to Petr Soukup at: petr.soukup@fsv.cuni.cz). In other words, students will have eight days to prepare and submit their homework assignments.

Grading:

  • 91 - 100 points = grade A
  • 81 - 90 points = grade B
  • 71 - 80 points = grade C
  • 61 - 70 points = grade D
  • 51 - 60 points = grade E
  • 0 - 50 points = not passed (grade F)

NOTE: Total points earned will be rounded to the whole number (e. g. the overall result of 50.5 points is rounded to 51 points and corresponds to the grade E).

Literatura - angličtina
Poslední úprava: PhDr. Ing. Petr Soukup, Ph.D. (18.09.2023)

Mandatory:

https://www.learnstatswithjamovi.com/

Recommended:

deVaus, D. (2002). Surveys in social research. London:Routledge - Taylor & Francis Group.

Metody výuky - angličtina
Poslední úprava: PhDr. Ing. Petr Soukup, Ph.D. (05.10.2023)

The classes are a combination of lectures and seminars. The first part of each class (approx. 40 minutes) is a lecture during which the tutor introduces key concepts in statistical theory and methods of data analysis (see syllabus below). The second part (approx. 40 minutes) is a seminar where students apply the methods introduced during the lecture in the jamovi environment. This freeware can be dowloaded at: https://www.jamovi.org/download.html

The course will be taught in PC lab 229.  You can use your own computers as well.

Link for MS Teams:

https://teams.microsoft.com/l/meetup-join/19%3ameeting_OGQxNjUwOWYtMTRiZS00NjFjLThkMDktNjUyYWRhZGQ2NDk0%40thread.v2/0?context=%7b%22Tid%22%3a%2273844aaf-f10c-4dee-aaaf-5eeb27962a5d%22%2c%22Oid%22%3a%2244019797-e6cf-458d-996e-9e9b298c7895%22%7d

 

Sylabus - angličtina
Poslední úprava: PhDr. Ing. Petr Soukup, Ph.D. (18.09.2023)

Course Schedule

Week 1: Course overview. Introduction to jamovi environment.

Week 2: Data matrix. Data preparattion (recode, compute). Assigning of labels to variables.
Week 3: Descriptive statistics.
Week 4: Introduction to probability distributions. Sampling variation. Central limit theorem. Confidence intervals (for the mean).
Week 5: Statistical hypotheses testing framework. One-sample t-test.
Week 6: Independent-samples t-test. 
Week 7: Analysis of variance (within- and between-group variability, F-test, post-hoc tests).
Week 8: Correlation analysis (Pearson and Spearman correlation coefficients, Scatterplot).
Week 9: Analysis of categorical data I (confidence interval for a proportion, introduction to crosstabs).
Week 10: Analysis of categorical data II (chi-square test of independence, contingency coefficients, residuals).

 
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