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| Random networks; Edges vs social ties; sign up for presentation
| Random networks; Edges vs social ties; sign up for presentation
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|[https://github.com/sophieball/social_network/blob/main/w2_1_random_networks.pdf slide3]
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Latest revision as of 16:02, 22 April 2026

Overview

Room: -1.101 (PC Pool), IFI, Goldschmidtstr. 7

Time: Wednesdays 14:00-16:00 weekly, starting 15.04.2026

Lecturers: Huilian Sophie Qiu, Xiaoming Fu

Module: M.Inf.1129

ECTS: 5

Format

Each class consists of a 1h lecture and a 1h student presentation.

Evaluation will be based on attendance (10%), class participation (10%), presentation (30%), and final project (50%).

Paper presentation requirements:

1. At least 12 mins;

2. Clear statement of the research questions in the papers;

3. Focus on methods and results.

Final project requirements: replicate a paper related to social network analysis:

1. Single column;

2. 10pt font, 1.5x line spacing;

3. You can have as many images and tables as you want;

4. 10 pages;

5. Focus on the methods and results;

6. For all networks, present their basic descriptions (size, density, degree distributions, number of largest components, size of largest components, etc)

Slides: https://github.com/sophieball/social_network

Data and Software

Data: Kaggle

Software: Python Networkx, Jupyter notebook, pandas

Example: https://github.com/sophieball/social_network/tree/main/code

Tutorial: http://networkx.org/documentation/stable/tutorial.html

Schedule (Tentative)

Date Topic Slides Papers
15.04.2026 (14:00-16:00) Introduction; Intro to graph theory slide1slide2
22.04.2026 (14:00-16:00) Random networks; Edges vs social ties; sign up for presentation slide3
29.04.2026 (14:00-16:00) Triads and structural balance; From social processes to graphs
06.05.2026 (14:00-16:00) Homophily and degree correlation (parts 1 & 2) LLMs generate structurally realistic social networks but overestimate political homophily
13.05.2026 (14:00-16:00) Power and centrality in social networks; social exchange Investigating Centrality Measures in Social Networks with Community Structure
20.05.2026 (14:00-16:00) Detecting communities; Structural equivalence Measuring group fairness in community detection
27.05.2026 (14:00-16:00) Affiliations and overlapping subgroups Overlapping community and entropy of neighborhood information for identifying influential nodes in complex networks
03.06.2026 (14:00-16:00) TBD
10.06.2026 (14:00-16:00) Network Analysis of Open Source Software; Visualization Connected to Stay: Gender Homophily and Its Role in Open-Source Software Developer Retention
17.06.2026 (14:00-16:00) Scale-free networks; Network inequality Quantifying Information Distribution in Social Networks: The Structural Entropy Index of Community (SEIC) for Twitter Communication Analysis
24.06.2026 (14:00-16:00) Small-world networks; Social Capital (part 1) Analyzing digital propaganda and conflict rhetoric: a study on Russia’s bot-driven campaigns and counter-narratives during the Ukraine crisis
01.07.2026 (14:00-16:00) Social Capital (part 2); Diffusion and contagion Do Women Suffer from Network Closure? The Moderating Effect of Social Capital on Gender Inequality in a Project-Based Labor Market, 1929 to 2010
08.07.2026 (14:00-16:00) Ethical issues; Exemplary studies FairSNA: Algorithmic Fairness in Social Network Analysis
15.07.2026 (14:00-16:00) Guest lecture
22.07.2026 (14:00-16:00) Final Project Presentations
TBA Written Report