CS565: TOPICS in Human-Computer Interaction
ETHICS IN ARTIFICIAL INTELLIGENCE
Instructor
Dr. Sharifa Sultana <sharifas@illinois.edu >
Assistant Professor
Department of Computer Science
University of Illinois Urbana-Champaign
Email: sharifas@illinois.edu
Logistics
This course primarily meets in person. Zoom link might be provided on occasions.
Time: Tue & The 2:00 - 3:15 PM
Location: 0222 Siebel Center for Comp Sci
TA: TBA
Office Hours: On request over email. Please Put "CS 565: Ethics in AI" in the email header.
Course Description
This course introduces critical social analysis of the ethical aspects of Artificial Intelligence. Students will learn about the theories of ethics, the history of AI, the intersection between ethics and computing, the underlying values of AI, privacy concerns around AI applications, different kinds of biases (based on race, gender, age, sexual orientation, faith, geographic location, etc.) associated with many AI applications, the concerns around AI, and associated debates based on contemporary examples. This course will prepare students for systematically analyzing and auditing an AI system for its ethical standards, and designing new systems that are fairer.
Learning Objectives
Develop questions situated within the context of ethics in AI
Apply multiple frameworks to cases
Provide, receive, and act on constructive critiques of the paper
Apply systematically analyzing and auditing methodologies
Evaluate the AI system for ethical standards
Recommended Books
Crawford, Kate. “The atlas of AI: Power, politics, and the planetary costs of artificial intelligence.” Yale University Press, 2021.
Couldry, Nick, and Ulises A. Mejias. “Data colonialism: Rethinking big data’s relation to the contemporary subject.” Television & New Media 20.4 (2019): 336-349.
Barocas, Solon, Moritz Hardt, and Arvind Narayanan. “Fairness in machine learning.” Nips tutorial 1 (2017): 2.
Noble, Safiya Umoja. “Algorithms of oppression.” Algorithms of Oppression. New York University Press, 2018.
Merry, Sally Engle. “The seductions of quantification.” The Seductions of Quantification. University of Chicago Press, 2016.
Class Evaluation
Additional details on the grading breakdown/rubrics will be available as the semester progresses.
Class Participation Group: 10%
Students will form and discuss in groups.
Take summary notes.
Due: during every lecture.
The evaluation is based on the student’s active participation in discussion and question-answering, depth of understanding of the subject matter, skills of connecting different literature, critical analysis ability, and the strength in creative thinking.
Bi-weekly Case-Study Group Report: 40%
Due: midnight before the next lecture.
Way to submit: Canvas Assignment Submission Page.
Analysis of the case study. The analysis needs to be based on the framework used in the required readings.
Format: 2-2.5 page (without reference) PDF. 11pt. Times New Roman, single-spaced with 1” margin.
Must add a list of individual contributions to the submission.
Best 4 reports will be counted. For late submission, 20% will be deducted per day (so, no grade if delayed by 5 days or more).
Form 4 to 5 students per group
Individual Leading Weekly Discussions: 15%
2 students will form a group and lead class discussion at least once in the semester together. They will together work for presentations
summarizing the readings meaningfully (10 + 10 minutes, one paper each),
asking important (5) questions,
showing in class case studies and driving discussion.
The discussion leaders must read all the papers (including the optional readings, if any).
Grading criteria:
Time and style of presentation: 5%
Engagement with the content: 5%
Quality of questions, case study, and leading discussion: 5%
Final Project: 35%
Group Project: Form 4 to 5 students per group
Proposal: 10%
Due Date: 8th week.
Format: 1-2 pages PDF
Prepresentation: 5 Min presentation + Q&A + peer feedback
Grading criteria:
Topic and Motivation (250-500 words): 5%
Initial Literature Review (at least 5 papers): 3%
Methods and Data (250-500 words): 2%
If the initial proposal is not approved, the student will be assigned a project by the instructor. However, their proposal will still be graded according to the above rubrics.
Final Presentation: 10%
Prepare the slides and record them being presented by all the group members together. It should be roughly an eight-minute-long video.
For reference, you may follow some CHI or CSCW prerecorded presentations.
Video Submission Due Date: April 29 at 8 AM.
Duration: Maximum 8 minutes
Grading criteria:
Presenting the full contents in time: 4%
The clarity in the presentation: 3%
Q&A after the presentation. (2 mins): 3%
A full-length research paper: 15%.
Paper Submission Due Date: May 9 at 11:59 AM.
Format: A 15-page PDF (max, without references, the minimum size is 13 pages) in the ACM Master Article Template format
Use the CSCW Submission Template (Follow the Formatting and Length section here: https://cscw.acm.org/2024/index.php/submit-papers/)
The paper should be structured in CSCW standard format (e.g., introduction, literature review, methods, findings, and discussion are ideally the sections the paper should have).
Grading criteria:
Introduction and Literature Review: 5
Methods and Findings: 7
Discussion and Implication to AI and Critical Data Studies: 5
Paper Formatting, etc.: 3
Attendance Policy
The instructor will record the attendance through participation in discussion. For planned absence (e.g., religious observance, athletic commitment, interview, among others), students must inform the instructor and may turn in assignments in advance (if they will be absent on the day it is due). For unplanned occasions (e.g., serious illness, family emergency, among others), please contact the instructor immediately.
Academic Integrity
Students should pay particular attention to Article 1, Part 4: Academic Integrity. Read the Code at the following URL: http://studentcode.illinois.edu/. Academic dishonesty may result in a failing grade. Every student is expected to review and abide by the Academic Integrity Policy: https://studentcode.illinois.edu/article1/part4/1-401/. Ignorance is not an excuse for any academic dishonesty. It is your responsibility to read this policy to avoid any misunderstanding.
Mental Health
Significant stress, mood changes, excessive worry, substance/alcohol misuse or interferences in eating or sleep can have an impact on academic performance, social development, and emotional wellbeing. The University of Illinois offers a variety of confidential services including individual and group counseling, crisis intervention, psychiatric services, and specialized screenings which are covered through the Student Health Fee. If you or someone you know experiences any of the above mental health concerns, it is strongly encouraged to contact or visit any of the University’s resources provided below. Getting help is a smart and courageous thing to do for yourself and for those who care about you.
Counseling Center (217) 333-3704
McKinley Health Center (217) 333-2700
National Suicide Prevention Lifeline (800) 273-8255
Rosecrance Crisis Line (217) 359-4141 (available 24/7, 365 days a year)
If you are in immediate danger, call 911.