PředmětyPředměty(verze: 945)
Předmět, akademický rok 2023/2024
   Přihlásit přes CAS
Quantitative Methods - JTM110
Anglický název: Quantitative Methods
Zajišťuje: Katedra ruských a východoevropských studií (23-KRVS)
Fakulta: Fakulta sociálních věd
Platnost: od 2020
Semestr: zimní
E-Kredity: 6
Způsob provedení zkoušky: zimní s.:písemná
Rozsah, examinace: zimní s.:2/2, Zk [HS]
Počet míst: neurčen / neurčen (neurčen)
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
Vysvětlení: The course is taught at UCL!!!
Další informace: https://www.ucl.ac.uk/ssees/graduate-module-listings
Garant: Randolph Luca Bruno, Ph.D.
Třída: Externí předmět nevyučovaný na UK
Anotace
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)
This graduate course assumes no prior knowledge of statistics or knowledge of mathematics beyond
GCSE (or equivalent)-level. It provides a basic introduction to statistics essential for multi-disciplinary
study. The emphasis is on elements of statistical thinking and insight is drawn from simple data and
concepts rather than complex derivations and formulae. The course presents quantitative methods as
an essential intellectual method appropriate for study alongside other approaches to social sciences.
The course is oriented towards making practical use of simple statistical methods and is focused
particularly on interpretation of the results. The second half of the course, introduces students to
regression analysis and so prepares them for more advanced courses in quantitative methods and
econometrics. By the end of the course students all students will be able to produce and interpret
empirical results using real world data. The course uses the STATA software package.
Cíl předmětu - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Aims:
1. To understand statistical thinking as a fundamental intellectual method.
2. To introduce statistical ideas and statistical reasoning that is relevant to students of social
sciences and humanities.
3. To provide a foundation in basic statistical techniques and principles.
4. To prepare students for the spring term course in Advanced Quantitative Methods.
5. To introduce students to the STATA software package.

Objectives:
By the end of the course, students will:
1. Be aware of different types of data and understand issues relating to methods and errors of
sampling, and other biases in data.
2. Have gained practical skills of presenting and interpreting quantitative data such as descriptive
statistics, measures of central tendency, statistical inference, and measures of association.
3. Have a basic understanding of the principles and limitations of linear regression.
4. Be able to access a greater range of literature utilising quantitative approaches.
5. Be prepared to use Stata for basic data analysis, and for creating tables and graphs.

Podmínky zakončení předmětu - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Grading is based on the Dean's Measure no. 20/2019: https://fsv.cuni.cz/deans-measure-no-20/2019

  • 91% and more   => A
  • 81-90%             => B
  • 71-80%             => C
  • 61-70%             => D
  • 51-60%             => E
  • 0-50%               => F
Literatura - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Core Reading
Compulsory
? Wright, Daniel B. (2002). First Steps in Statistics. Sage.
Recommended
? Hamilton, Lawrence C. (2006). Statistics with Stata.
? Moore, David S. (2001). Statistics: Concepts and Controversies. W. H. Freeman and Company
? Stark, Philip B. SticiGui: Statistics Tools for Internet and Classroom Instruction with a Graphical
User Interface, Department of Statistics University of California, Berkeley
(http://www.stat.berkeley.edu/users/stark/SticiGui/Text/index.htm).
? Taagepera, Rein (2007). 'Predictive versus postdictive models', European Political Science 6: 114-
23.
Optional
? Agresti, Alan & Finlay, Barbara (1997). Statistical methods for the social sciences. 3rd ed. Upper
Saddle River, N.J. : Prentice Hall.
It is strongly recommended that students read the assigned chapters before attending
the lecture!

Metody výuky - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Teaching & Learning Methods (Number of Hours): 200 hours total
Lectures/Classes 10 hours
Lab sessions: 13.5 hours
Private reading, coursework, exam preparation, exam: 176.5 hours

Požadavky ke zkoušce - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Assessment:
50% two project assignments (one due after reading week, one due start of second term)
50% two-hour written exam in the final week of term

Sylabus - angličtina
Poslední úprava: Mgr. Jiřina Tomečková (21.09.2023)

Topics Reading
(Wright)
1 Data sources, collection and visualisation
Data sources, sampling, selection bias.
Qualitative and quantitative data.
Bar charts, line charts and pie charts.
Avoiding the misuse of statistics.
Ch 2, 4
2 Simple descriptive statistics
Contingency tables, Frequency table and histogram.
Central tendency: mean, median, mode.
The spread of data: range, quartiles, variance and standard deviation.
Ch 1-3
3 Distribution and inference
Beyond central tendency and spread: skewness, kurtosis, the normal curve.
Normal distribution. Visualizing distributions.
Ch 5
4 Associating two variables
Ordinal and categorical data: contingency tables, chi-square.
Continuous data: scatterplots, correlation.
Ch 8, 10
5 Statistical significance
Confidence interval of mean.
Statistical significance, hypothesis testing.
Ch 6
6 Comparing two groups
Within group T test
Between groups T-tests
Ch 6
7 Comparing more than two groups
Analysis of variance
Ch 7
8 Linear regression
Linear equation, slope and intercept.
Bivariate regression.
Ch 8
9 Linear regression
OLS and R2.
Data considerations.
Multivariate regression, model specification.
Variants of regression analysis.
10 Written examination
Review session
A 2-hour written examination

 
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