Social Media Analytics
Lecturers: Mourad Khayati and Philippe Cudré-Mauroux
Teaching language: English
Level: MSc students
Academic year: Spring 2024
Overview
Description: The course will cover techniques and algorithms to analyze the structure of social networks and identify their main properties. We start by studying the central concepts of social media analytics (e.g., data structures, similarity/centrality measures, traversal algorithms, etc.). Next, the course will delve into studying various algorithms to identify communities in social networks. Then, the course will cover advanced social network applications, including diffusion/influence, crowdsourcing, social recommendation, social mining, and link analysis.
Learning outcomes: On successful completion of this course, you will be able to:
Structure
Teaching format: This course consists of lectures and exercises/labs. The weekly/bi-weekly exercises are an important part of the course.
Textbook: The textbook for the course is Social Data Mining: an Introduction, First edition, Cambridge University Press, Reza Zafarani, Mohammad Ali Abbasi and Huan Liu, 2014
Exercises: The exercises will be given by Manuel Mondal. It is highly recommended to solve the exercises before attending the exercise session. You need to pass half of the exercises to be admitted for the final exam. Solving the exercises will be the best way to prepare for the final exam.
Syllabus
The lectures take place TU 14:15-17:00 in room F130 (UniFR, PER21). The lecture notes for the course will become available as we progress through the semester. Tentative syllabus and slides: