University of Opole - Central Authentication System
Strona główna

Advanced Statistical Analysis for Social Sciences

General data

Course ID: 02.06-S2-EN-ASA
Erasmus code / ISCED: 14.2 Kod klasyfikacyjny przedmiotu składa się z trzech do pięciu cyfr, przy czym trzy pierwsze oznaczają klasyfikację dziedziny wg. Listy kodów dziedzin obowiązującej w programie Socrates/Erasmus, czwarta (dotąd na ogół 0) – ewentualne uszczegółowienie informacji o dyscyplinie, piąta – stopień zaawansowania przedmiotu ustalony na podstawie roku studiów, dla którego przedmiot jest przeznaczony. / (0314) Sociology and cultural studies The ISCED (International Standard Classification of Education) code has been designed by UNESCO.
Course title: Advanced Statistical Analysis for Social Sciences
Name in Polish: Advanced Statistical Analysis for Social Sciences
Organizational unit: Institute of Pedagogical Sciences
Course groups: Courses for short-term studies
ECTS credit allocation (and other scores): 6.00 Basic information on ECTS credits allocation principles:
  • the annual hourly workload of the student’s work required to achieve the expected learning outcomes for a given stage is 1500-1800h, corresponding to 60 ECTS;
  • the student’s weekly hourly workload is 45 h;
  • 1 ECTS point corresponds to 25-30 hours of student work needed to achieve the assumed learning outcomes;
  • weekly student workload necessary to achieve the assumed learning outcomes allows to obtain 1.5 ECTS;
  • work required to pass the course, which has been assigned 3 ECTS, constitutes 10% of the semester student load.
Language: English
Supplementary literature:

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society

• Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research

Short description:

The aim of the course is to enable the students to use the statistical theory and quantitative analysis software (SPSS) together with online surveying software (LimeSurvey) to conduct their own statistical analysis for typical purposes of social science. The course is design in two parallel paths: the laboratory work with the data and software and the theoretical workshops for the statistical theory. Both descriptive and inferential statistics are used for a comprehensive understanding of the quantitative inquiry. The elements of data collecting and preparation are included so that the students are able to understand the whole process of data analysis, including the understanding of the role of the design of the measurement tools and data sources. The laboratory work will utilize both the students’ own data collected during the course and the data collected in the lecturer's projects.

Full description:

Course content:

A. Lectures:

• Introduction to the syllabus and to the topic of the course. Overview of the research project behind the course.

• The research process. Asking research questions. Collecting data. Introducing variables.

• Introducing LimeSurvey.

• Frequency distributions. Proportions, percentages, rates. Introducing visualizations of data.

• Measures of central tendency: mode, median, mean.

• Measures of variability: range, variance, standard deviation.

• Normal distribution. Standard normal distribution and standard normal table; the Z value. Sampling theory. Probability sampling. The concept of sampling distribution. The central limit theorem.

• Estimation: confidence intervals for means, confidence intervals for proportions.

• Testing hypothesis. Stating null hypothesis and the research hypothesis. Probability values and Alpha. Errors in hypothesis testing. Testing hypotheses: with one sample; two sample means.

• Cross tabulation. Properties of bivariate relationship. Chi-Square test and measures of association. Concept of statistical independence. Testing hypothesis with Chi-Square. Proportional reduction of error. Lambda, Cramer’s V, Gamma and Kendall’s Tau-b tests.

• Analysis of variance. Testing hypotheses with ANOVA. Regression and correlation. The scatter plot. Linear relationships and prediction. R square. Multiple regression. ANOVA for multiple linear regression.

B. Labs:

• General discussion: objectives of quantitative research; challenges and limitations.

• Defining variables in SPSS. Coding questionnaire data. Automatic import from LimeSurvey. Assignment: focus on a topic of choice of the research on the international students at the Uni of Opole. What can be measured? What would be interesting to learn? What facts? What opinions? What attitudes? Work in pairs.

• Creating a survey, creating groups, editing questions. Managing question types. Assignment: Prepare a research question - and survey items to measure it - for international students of the Uni of Opole. One per a pair.

• Discussing the random sample of international students at the University of Opole is drew. Each student is assigned 4 research subjects to contact regarding taking the online survey. Assignment: the final version of the survey items per pair.

• Assignment: the report on the survey realization process from 4 respondents. The survey finishes. Data are imported to a database in SPSS.

• Outputting frequency distributions in SPSS. Calculating proportions, percentages, rates. Calculating measures of central tendency: mode, median, mean. Calculating measures of variability: range, variance, standard deviation.

• Hypothesis testing in SPSS. Assignment: Estimation of the proportions and means of the pair’s variables from the international students’ research.

• Cross-tabs in SPSS. Assignment: 4 hypothesis per pair tested from the international student’s research.

• Testing hypotheses with ANOVA. Regression and correlation. The scatter plot. Linear relationships and prediction. R square. Multiple regression. ANOVA for multiple linear regression. Assignment: 4 bivariate relationships analyzed for the association and significance.

• Submitting a final report: your own analysis of international students at the Uni of Opole

Bibliography:

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 1. and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 1.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 2 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 2.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 3 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 3.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 4 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 4.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 5, chapter 6 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 5.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 7 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 6.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 8 and Jack Levin, James Alan Fox,, David Forde, Elementary Statistics in Social Research: chapter 7.

• Chava Frankfort-Nachmias, Anna Leon-Guerrero, Social Statistics for a Diverse Society: chapter 9 & chapter 10

Learning outcomes:

Knowledge

Student:

• knows the methods of quantitative analysis in sociology

• understands the logic of the quantitative research project

• has an advanced knowledge of surveying and statistical data analysis software

• knows descriptive statistics for social sciences

• knows inferential statistics for social sciences

Skills

Student:

• can state the research problem and hypotheses

• can select the appropriate methodology for the research problem

• can interpret the data and discuss the research results

• is able to write a research report

• is able to interpret the empirical relationships between variables

• is able to establish causation

• can use statistical theory for the sociological inquiry

Social competences

Student:

• is open to use different research strategies and theoretical approaches and is aware of the place of statistical reasoning in the sociological enterprise

• is ready and eager to research her own quantitative analytical project

• is able to formulate her own research problems and hypotheses and is confident in using statistical reasoning to answer them

• is reflexive in use of ICT in sociological research

Assessment methods and assessment criteria:

• In class evaluation of assignments

• In class evaluation of analysis development

• Evaluation of the final report

The participation in lectures is credited and not graded.

Student performance in labs is graded based on”

• the involvement and performance in the class assignments and analyses – 50%

• the final report – 50%

Classes in period "Summer semestr 2023/2024" (in progress)

Time span: 2024-03-01 - 2024-09-30
Selected timetable range:
Navigate to timetable
Type of class: (unknown)
Coordinators: (unknown)
Group instructors: (unknown)
Students list: (inaccessible to you)
Examination: Grading
Course descriptions are protected by copyright.
Copyright by University of Opole.
pl. Kopernika 11a, 45-040 Opole https://uni.opole.pl contact accessibility statement USOSweb 7.0.3.0-www2-1 (2024-04-02)