Networked Life
NETS-1120
Fall 2022
Networked Life
NETS-1120
Fall 2022
Course Overview
Course Overview
How do infectious diseases spread? Why do some memes spread virally while others do not? Why do some teams or organizations perform better than others? Are we all really connected by six degrees of separation and, if so, how is that are our neighborhoods, workplaces, and social circles are so segregated? The answers to these questions and many more are all part of Network Science, a fascinating subject at the intersection of many disciplines, including computer science, communications, psychology, sociology, mathematics, and economics. This course will provide an introduction to the technical language of network science as well as to a collection of applications such as mathematical epidemiology, social contagion, games of cooperation and coordination, and collective problem solving.
Course Schedule
Course Schedule
Week 1: Course Intro
Lecture 1 — Course Intro and Overview
- SD, Chapter 1
- HN, Chapter 1
- Travers and Milgram (1969)
- Optional: Watts and Strogatz (1998)
- Optional: NPR Six Degrees Podcast https://www.wnycstudios.org/podcasts/undiscovered/episodes/six-degrees
Lecture 2 — How to read a scientific paper
Week 2: Network Terminology and Concepts
Lecture 3 — Basic Terminology Part 1
- SD, Chapter 2
- HN, Chapters 2 and 5
Lecture 4 — Basic Terminology Part 2
Week 3: Real Networks
Lecture 5 — Static Networks, Part 1
- Leskovec and Horvitz (2007)
- Ugander et al (2011)
Lecture 6 — Static Networks, Part 2
- Optional: Feld (1991)
- Optional: Newman et al (2002)
Week 4: Real Networks (Pt. 2)
Lecture 7 — Inferring Networks from Data
- De Choudury et al (2010)
Lecture 8 — Dynamic Networks
- Yang et al (2021)
- Optional: Kossinets and Watts (2006)
- Optional: Kossinets and Watts (2009)
Week 5: Models of Networks
Lecture 9 — Random Networks
- SD, Chapters 3-5
- Amaral et al (2000)
- Kleinberg (1999)
- Optional: Watts and Strogatz (1998)
- Optional: Kleinberg (2000)
- Optional: Watts et al (2002)
Lecture 10 — Clustering and Navigation, Part 1
Week 6: Models of Networks (Pt. 2)
Lecture 11 — Clustering and Navigation, Part 2
Week 7: Midterm
Review for Midterm
Midterm Exam (25% of grade)
Fall Break
Week 8: Small World Redux
Lecture 12 — Replicating the Small-World Experiment
- Goel et al (2009)
- Optional: Dodds et al (2003)
Week 9: Epidemics
Lecture 13 — Intro to Epidemics
- SD, Chapter 6
- HN Chapter 3
- Chang et al 2020
- Optional: Clauset Network Epi
- Optional: Watts et al (2005)
- Optional: Keeling and Eames (2005)
- Optional: Pastor Satorras and Vespigani (2001)
Lecture 14 — Unpredictability and Resurgence
Week 10: Social Influence
Lecture 15 — Social Influence and Collective Decisions
- SD, Chapters 7-8
- HN Chapters 7-8
- Granovetter (1978)
- Optional: Watts (2002)
Lecture 16 — Social Influence and Collective Decisions, Part 2
Week 11: Cultural Markets
Lecture 17 — Inequality and Unpredictability in Cultural Markets, Part 1
- Macy et al (2019)
- Epstein et al (2021)
- Optional: Salganik et al (2006)
Lecture 18 — Inequality and Unpredictability in Cultural Markets, Part 2
Week 12: Virality
Lecture 19 — Structure of Online Virality
- Bakshy et al (2011)
- Cheng et al (2014)
- Martin et al (2016)
- Optional: Goel et al (2012)
- Optional: Goel et al (2015)
- Optional: https://www.npr.org/2017/10/03/539523369/live-episode-buzzfeed-jonah-peretti
Lecture 20 — Predicting Virality, Part 1
Week 13: Virality (Pt. 2)
Lecture 21 — Predicting Virality, Part 2
Thanksgiving
Week 14: Cooperation
Lecture 22 — Cooperation on Static Networks
- Axelrod and Hamilton (1981)
- Embrey et al (2018)
- Optional: Suri and Watts (2011)
- Optional: Wang, Suri, and Watts (2012)
Lecture 23 — Cooperation on Dynamic Networks
Week 14: Cooperation
Lecture 24 — Collaboration on Networks
- Jacobs and Watts (2021)
- Optional: Kearns and Suri (2006)
- Optional: Mason and Watts (2012)
- Optional: Shore et al (2015)
- Optional: Mao et al (2016)
- Optional: Almaatouq et al (2020)
Lecture 25 — Informal Networks in Firms
Week 16: Final
Review for Final
Final Exam (35% of grade)