Universität Wien

040501 KU Data Analysis for Marketing Decisions (MA) (2020W)

4.00 ECTS (2.00 SWS), SPL 4 - Wirtschaftswissenschaften
Prüfungsimmanente Lehrveranstaltung

It is absolutely essential that all registered students attend the first session (Introduction/Vorbesprechung) as failure to do so will result in their exclusion from the course.

By registering for this course you agree that the automated plagiarism software Turnitin processes and stores your data (i.e. project work, seminar papers, etc.).

Exchange students must have successfully completed at least a basic/introductory marketing course at their home university. To be able to attend the course they must hand in a relevant transcript/certificate by October 11th, 2020.

https://international-marketing.univie.ac.at/studies/master-bwibw/courses-ws-202021/#c581287

An/Abmeldung

Hinweis: Ihr Anmeldezeitpunkt innerhalb der Frist hat keine Auswirkungen auf die Platzvergabe (kein "first come, first served").

Details

max. 30 Teilnehmer*innen
Sprache: Englisch

Lehrende

Termine (iCal) - nächster Termin ist mit N markiert

Midterm Exam: 05.11.2020, 11:30, digital
Final Exam: 08.01.2021, 11:30, digital

  • Freitag 02.10. 11:30 - 13:00 Digital
  • Freitag 09.10. 11:30 - 13:00 Digital
  • Freitag 16.10. 11:30 - 13:00 Digital
  • Freitag 23.10. 11:30 - 13:00 Digital
  • Freitag 30.10. 11:30 - 13:00 Digital
  • Donnerstag 05.11. 11:30 - 13:00 Digital
  • Freitag 06.11. 11:30 - 13:00 Digital
  • Freitag 13.11. 11:30 - 13:00 Digital
  • Freitag 20.11. 11:30 - 13:00 Digital
  • Freitag 27.11. 11:30 - 13:00 Digital
  • Freitag 04.12. 11:30 - 13:00 Digital
  • Freitag 11.12. 11:30 - 13:00 Digital
  • Freitag 18.12. 11:30 - 13:00 Digital
  • Freitag 08.01. 11:30 - 13:00 Digital
  • Freitag 15.01. 11:30 - 13:00 Digital

Information

Ziele, Inhalte und Methode der Lehrveranstaltung

Sound knowledge of statistics and data analysis is an essential requirement for marketing research and managerial decision-making – more than one would expect! The present course discusses (a) key concepts of statistics and statistical inference (e.g., NHST, Type I and II error, confidence intervals) and (b) different methods of data analysis (e.g., t-test, χ2 test, ANOVA, regression analysis) in a series of lectures that combine theory, illustrative examples, and hands-on exercises. Although IBM SPSS software is used in the context of DAMD, the course is not a tutorial on the SPSS software package. Rather it focuses on the logic, the implementation, and the interpretation of statistical data analysis in general. Students who successfully complete DAMD will be equipped with the ability to effectively carry out data analysis projects in their later academic and professional career.

The major topics covered in the course are:
Theoretical introduction to basic research terms: data, variables, models, research process, sample, population, measurement scales, etc.
Introduction and familiarization with the statistical software SPSS
Clearing and preparing data for further analysis
Descriptive statistics: central tendency, variability, skewness, kurtosis
Testing statistical assumptions: normality, homogeneity of variance, homoscedasticity
Inferential statistics and hypothesis testing: parameter estimates, sampling error, confidence intervals, Type I and Type II errors, p-values, t-values
Performing comparisons: chi-square test, independent samples t-test, paired-sample t-tests, analysis of variance
Investigating relationships: bivariate correlation, partial correlation
Regression models: simple linear regression, multiple linear regression, logistic regression
Finding structures using Factor Analysis
Presenting, reporting and interpreting results
Identifying practical and theoretical implications drawn from statistical analyses

The sessions involve theory discussions accompanied by practical examples and hands-on exercises. Lectures primarily provide background knowledge in understanding the theory and logic behind the statistical techniques and finally to illustrate how to perform and interpret the data analysis using the SPSS environment as an example. Note that successful completion of DAMD depends greatly on whether students systematically review the class material.

Art der Leistungskontrolle und erlaubte Hilfsmittel

Students’ performance in the course is assessed as follows:
Midterm exam: 30%
Group Project: 25%
Final exam: 45%

No material other than a dictonary may be used in the exams/quiz.

Mindestanforderungen und Beurteilungsmaßstab

The course has “prüfungsimmanenten Charakter”, therefore attendance is mandatory throughout the semester – more than three absences automatically results in a grade of 5 (“fail”).

In total, a minimum of 50 percent is needed to pass the course. The grading system is the following: 0 to 49% - grade 5, 50 to 59% - grade 4, 60 to 69% - grade 3, 70 to 79% - grade 2, 80 to 100% - grade 1.
Students who fail must repeat the entire course (and must register in the usual way next time the course is offered). No opportunities for make-ups will be offered.

Prüfungsstoff

The midterm exam is based on the topics covered in sessions 1 to 5 and the corresponding book chapters. The exam typically (but not necessarily) involves a combination of single-choice/true-false questions.

The midterm exam is based on the topics covered in sessions 1 to 5 and the corresponding book chapters. The exam typically (but not necessarily) involves a combination of single-choice/true-false questions.

The group project is an assignment conducted by teams of approx. 5 students and involves the analysis of a dataset as well as the interpretation and presentation of the relevant results. The group project is a collective effort and all members are expected to contribute as the same grade is awarded to students belonging to the same team. Detailed instructions will be provided in class.

The final exam covers all topics discussed in the lectures and corresponding book chapters. The exam typically includes questions of different formats (e.g., multiple-choice questions and mini cases with open-ended questions).

Literatur

Required textbook: Field, A. (2018), Discovering Statistics Using IBM SPSS Statistics (5th edition), Sage Publications: London [ISBN: 9781526445780] OR (old 4th edition): Field, A. (2013), Discovering Statistics Using SPSS (4th edition), Sage Publications: London [ISBN: 978-1-4462-4918-5].
Recommended additional textbook: Diamantopoulos, D. and Schlegelmilch, B. (2000), Taking the Fear out of Data Analysis (2nd edition), South-Western CENGAGE Learning: London [ISBN: 978-1-86152-430-0].
Complementary material: Marshall, E. (2016), The Statistics Tutor’s Quick Guide to Commonly Used Statistical Tests, University of Shefield - Statstutor Community Project, [Retrieved from www.statstutor.ac.uk]. → will be available on Moodle

Systematically reviewing the course material (slides, book chapters, and exercises) is as essential as being (mentally) present in the online lectures!

Zuordnung im Vorlesungsverzeichnis

Letzte Änderung: Fr 12.05.2023 00:12