2024 Fall COMPSCI 294 273 LEC 273

2024 Fall

COMPSCI 294 273 - LEC 273

Special Topics

Designing Algorithmic Media

Jonathan Stray

Aug 28, 2024 - Dec 13, 2024
We
02:00 pm - 03:59 pm
Class #:33075
Units: 3

Instruction Mode: In-Person Instruction

Current Enrollment

Total Open Seats: 23
Enrolled: 27
Waitlisted: 0
Capacity: 50
Waitlist Max: 20
Open Reserved Seats:
46 reserved for Computer Science and Electrical Engineering and Computer Sciences Graduate Students

Hours & Workload

1 to 3 hours of instructor presentation of course materials per week, and 2 to 11 hours of outside work hours per week.

Course Catalog Description

Topics will vary from semester to semester. See Computer Science Division announcements.

Class Description

This graduate seminar is an interdisciplinary introduction to the individual, social, economic, and political effects of AI-driven media, with particular emphasis on design approaches that grapple with these issues. Social media is an important application, but we are also concerned with LLMs and systems like news recommenders, online shopping, job listings, and “trending” algorithms. We will start with the basic question of “who should see what when?” and from there to the social science of recommender effects, algorithmic approaches to grapple with them. Topics include a taxonomy of benefits and harms, models of preference and utility, alignment and optimization, causal inference of user effects, well-being, addiction, polarization and conflict, diversity, filter bubbles and rabbit holes, fairness in information retrieval, incorporation of non-engagement signals into ranking, and the design of user controls. Some topics require technical background (computer science or quantitative social science) but students from all related fields are invited to attend.

Rules & Requirements

Requisites

  • Graduate students NOT in the Master of Engineering Program other those in EECS

Repeat Rules

Reserved Seats

Current Enrollment

Open Reserved Seats:
46 reserved for Computer Science and Electrical Engineering and Computer Sciences Graduate Students

Textbooks & Materials

See class syllabus or https://calstudentstore.berkeley.edu/textbooks for the most current information.

Textbook Lookup

Guide to Open, Free, & Affordable Course Materials

eTextbooks

Associated Sections

None