Exercises Data Analysis & Visualisation

  • Enseignement

    Détails

    Faculté Faculté des sciences économiques et sociales et du management
    Domaine Sciences de la Communication et des Médias
    Code UE-EKM.01489
    Langues Anglais
    Type d'enseignement Exercice
    Cursus Master
    Semestre(s) SA-2026

    Horaires et salles

    Horaire résumé Mercredi 15:15 - 17:00, Hebdomadaire (Semestre d'automne)
    Heures par semaine 2

    Enseignement

    Enseignant·e·s
    • Rohrbach Tobias
    Assistant·e·s
    • Kukles Yulia
    Description

    This course is designed for Master's students to enhance their foundational knowledge of statistics and data analysis through hands-on experience. Students will acquire practical skills in representing various data structures and performing essential statistical analyses commonly used communication research, including descriptive analyses, regression analysis, and dimensionality reduction techniques, with an emphasis on visualizing and reporting key outputs effectively. In addition to quantitative methods, the course introduces advanced techniques (meta-analysis, automated text analysis, basic machine learning) and encourages critical reflection on contemporary methodological topics, such as open science. Students will also explore qualitative approaches to data analysis, enabling a comprehensive understanding of data visualization. By the end of the course, participants will be equipped to analyze and present data confidently and critically. Note: The course will heavily rely on statistical software R. Previous knowledge of R is encouraged but not necessary.

    Objectifs de formation
    • Develop the ability to represent, analyze, and report quantitative and qualitative relevant to communication research
    • Conduct essential statistical analyses, including descriptive statistics, regression analysis, and dimensionality reduction techniques
    • Effectively visualize and communicate key outputs from data analyses
    • Understand and be able to interpret advanced techniques such as meta-analysis and automated text analysis in research contexts
    • Reflect critically on contemporary methodological topics, including open science practices.
    • Explore and integrate qualitative approaches to enhance data analysis and visualization skills.
    Commentaire

    Students will be required to bring their personal computer to the course.

    Places disponibles 30
    Softskills Oui
    Places softskills 5
    Hors domaine Non
    BeNeFri Oui
    Mobilité Oui
    UniPop Non
  • Dates et salles
    Date Heure Type d'enseignement Lieu
    16.09.2026 15:15 - 17:00 Cours
    23.09.2026 15:15 - 17:00 Cours
    30.09.2026 15:15 - 17:00 Cours
    07.10.2026 15:15 - 17:00 Cours
    14.10.2026 15:15 - 17:00 Cours
    21.10.2026 15:15 - 17:00 Cours
    28.10.2026 15:15 - 17:00 Cours
    04.11.2026 15:15 - 17:00 Cours
    11.11.2026 15:15 - 17:00 Cours
    18.11.2026 15:15 - 17:00 Cours
    25.11.2026 15:15 - 17:00 Cours
    02.12.2026 15:15 - 17:00 Cours
    09.12.2026 15:15 - 17:00 Cours
    16.12.2026 15:15 - 17:00 Cours
  • Modalités d'évaluation

    Examen écrit

    Mode d'évaluation Par note
    Description

    A 60-minute written exam

    The course will be evaluated in form of an open-book exam, consisting of an applied data analysis and visualisation task. In addition, students will complete two pass or fail mini-exercices during the semester in preparation for the final exam. Students will be required to bring their own laptops to the exam!

  • Affiliation
    Valable pour les plans d'études suivants:
    Digital Society 90 [MA]
    Version: SA25_MA_PA_en_vo1
    DSS 3: Methods, Skills and Applications

    Ma - Digital Media & Communication for Social Impact - 90 ECTS
    Version: 2026-SA_V01
    Cours - 66 ECTS > Research Competencies - 6 ECTS