Data
Official data in SubjectManager for the following academic year: 2025-2026
Course director
Bóvári-Biri Judit
assistant professor,
Department of Pharmaceutical Biotechnology
Number of hours/semester
Lectures: 0 hours
Practices: 0 hours
Seminars: 12 hours
Total of: 12 hours
Subject data
- Code of subject: OTF-RP1-T
- 1 Credit
- Biotechnology BSc
- Optional module
- autumn
OTV-IBI1-T finished
Course headcount limitations
min. 5 people – max. 15 people
Topic
In this course, students will have the opportunity to learn advanced data management methods in the R environment to supplement their analytical skills.
Primary focus will be on advanced level script writing, data management using the tidyverse package, writing basic custom functions, and data export and reporting. Students will primarily learn by examples from sociological, psychological, demographic and business application.
Topics – Data analysis
1. Basic data management in R: objects, vectors, data frames.
2. Transforming and importing data.
3. Handling lists in R.
4. Creating and working with matrices.
5. Working with time-based data.
6. Efficient script writing in base R.
7. Introduction to writing functions in R.
8. Introduction to the tidyverse: the basic concepts of “tidy” data. I.
9. Introduction to the tidyverse: the basic concepts of “tidy” data. II.
10. Advanced visualization using ggplot2.
Topics – Statistics
1. Descriptive methods for categorical and continuous data.
2. Hypotheses testing I.: t-tests, chi-square and correlation.
3. Hypothesis testing II.: anova and non-parametric methods.
4. Regression modeling: OLS linear regression.
5. Regression modeling: categorical outcomes.
6. Regression trees, forests and other machine learning methods.
Lectures
Practices
Seminars
- 1.
Basic data management in R: objects, vectors, data frames.
- Bóvári-Biri Judit - 2.
Transforming and importing data.
- Bóvári-Biri Judit - 3.
Handling lists in R
- Bóvári-Biri Judit - 4.
Creating and working with matrices
- Bóvári-Biri Judit - 5.
Working with time-based data
- Bóvári-Biri Judit - 6.
Efficient script writing in base R
- Bóvári-Biri Judit - 7.
Introduction to writing functions in R
- Bóvári-Biri Judit - 8.
Introduction to the tidyverse: the basic concepts of “tidy” data. I.
- Bóvári-Biri Judit - 9.
Introduction to the tidyverse: the basic concepts of “tidy” data. II
- Bóvári-Biri Judit - 10.
Advanced visualization using ggplot2
- Bóvári-Biri Judit - 11.
Descriptive methods for categorical and continuous data
- Bóvári-Biri Judit - 12.
Hypotheses testing: t-tests, chi-square and correlation
- Bóvári-Biri Judit
Reading material
Obligatory literature
Literature developed by the Department
PPT slides
Notes
Recommended literature
· Wickham et al. (2025). R for Data Science. Available: https://r4ds.hadley.nz/
· Bonell, J – Ogihara, M. (2024). Exploring Data Science with R and the Tidyverse.
· Wickham, H. (2025). ggplot2: Elegant Graphics for Data Analysis. Available: https://ggplot2-book.org/
· Boehmke, B. C. (2014). Data Wrangling with R.
· Békés, G. – Kézdi, G. (2021). Data Analysis for Business, Economics, and Policy. Relevant Chapters.
· Freedman, D. – Pisani, R. – Purves, R. (2007). Statistics, Fourth Edition. Relevant Chapters.
· Agresti, A. (2018). An Introduction to Categorical Data Analysis, Third Edition. Relevant Chapters.
Conditions for acceptance of the semester
Mandatory attendance, completion of homework, end course analysis.
Mid-term exams
Homeworks, end course analysis
Making up for missed classes
No option
Exam topics/questions
End course analysis in practice
Examiners
Instructor / tutor of practices and seminars
- Bóvári-Biri Judit