Methods of Data Analysis
- Faculty
Faculty of Business Management and Social Sciences
- Version
Version 1 of 06.08.2024.
- Module identifier
22M1149
- Module level
Master
- Language of instruction
English
- ECTS credit points and grading
5.0
- Module frequency
only summerterm
- Duration
1 semester
- Brief description
This module covers topics related to data-driven planning and evaluation of management interventions in health care. It aims to enable students to use and understand quantitative data for controlling and evaluating management interventions in order to be able to better manage change and innovation. Thus, this course lays the foundation for evidence-based strategic management and change management.
- Teaching and learning outcomes
1) Introduction to data-driven control and related designs 2) Introduction to empirical evaluation and related designs 3) Statistical methods of prediction 3.1) Regression methods 3.2) Time series analyses 3.3) Application and exercises 4) Statistical methods of evaluation 4.1) Univariate and multivariate methods of comparing groups 4.2) Application and exercises (1) 4.3) Mixed methods research: combining quantitative and qualitative methods 4.4) Application and exercises
- Overall workload
The total workload for the module is 150 hours (see also "ECTS credit points and grading").
- Teaching and learning methods
Lecturer based learning Hours of workload Type of teaching Media implementation Concretization 45 Lecture Presence - Lecturer independent learning Hours of workload Type of teaching Media implementation Concretization 105 Preparation/follow-up for course work -
- Graded examination
- Presentation or
- Oral presentation, with written elaboration or
- Portfolio exam
- Remark on the assessment methods
The portfolio exam covers 100 points and consists of a learning diary (LTP) and one-hour written examination. The LTB is weighted by 40 points and the K1 by 60 points.
- Exam duration and scope
Presentation: approx. 20-40 minutes
Report (R): presentation of approx. 20-40 minutes with written report of approx. 5-10 pages
Portfolio exam:
- Written examination: in accordance with the valid study regulations
- Learning diary: approx. 10-15 pages
The requirements are specified in the respective class.
- Recommended prior knowledge
Descriptive statistics (distribution parameters, correlation, regression, graphical representations), Inductive statistics (type I and II error, p-value, confidence interval, significance test)
- Knowledge Broadening
Becoming familiar with statistical methods for management practice.
- Knowledge deepening
Having knowledge of the prerequisites, areas of application and limitations of the statistical methods covered.
- Knowledge Understanding
Solving problems in contexts that require healthcare planning, prediction, and evaluation.
- Application and Transfer
The students acquire knowledge and skills in the use of electronic tools for the application of statistical methods regarding different professional use cases.
- Academic Innovation
Students are able to use the insights gained from data analyses both in the context of corporate management and in the context of the corresponding scientific domains.
- Communication and Cooperation
Communicating the procedures, limitations, and interpretation of results of predictions and evaluations.
- Academic Self-Conception / Professionalism
Students are able to reflect on the possibilities and limitations of data-driven management in health organisations. They internalise the premise of underpinning management decisions with data as far as possible, but are also aware of the epistemological, methodological and economic limitations of the approaches used in each case.
- Literature
Bortz J, D?ring N. Forschungsmethoden und Evaluation: für Human- und Sozialwissenschaftler. Springer Verlag aktuellste Auflage Makridakis S, Wheelwright S, Hyndman R. Forecasting Methods And Applications, 3Rd Ed. Wiley Box GEP, Jenkins GM, Reinsel GC. Time Series Analysis: Forecasting and Control (Revised Edition). Wiley
- Linkage to other modules
This course lays the foundation for evidence-based strategic management and change management. As such, it prepares students for the specialisation "Change management in health care organisations".
- Applicability in study programs
- Management for Health Services, M.A.
- Management for Health Services, M.A.
- Person responsible for the module
- Hübner, Ursula Hertha
- Teachers
- Hübner, Ursula Hertha