Skip to Main Content
Search
Toggle navigation
Home
Research
Databases
Library and Research Guides
Streaming Video Databases
King County Library System (KCLS) Online Library
Citation Help
Library Tutorials
OCLC Worldcat
Journal Titles
Course Reserves
Copyright Information
Services
For All
Borrowing
Computers, Printing, Copiers & Scanning
Study Spaces
Assistive Technologies
Schedule Consultations
Request Titles for Purchase
Interlibrary Loan
Digital Literacy
For Faculty & Staff
Schedule Library Instruction
Place Materials on Reserve
About the Library
Hours
Plan Your Visit
Virtual Tours
Contact Us
Collections
Library Glossary
Staff Directory
Mission
Policies
Nearby Libraries
Help
Ask a Librarian
Off-campus access
My Library Account
Renew
Highline College
Highline College Library
Guides
Algorithmic Bias & Justice
Articles and Readings
Search this Guide
Search
Algorithmic Bias & Justice
Home
Human and Environmental Impact of AI
Articles and Readings
Books
Organizations and Researchers Pursuing Algorithmic Justice
Teaching Resources
Articles and Readings
A Move for 'Algorithmic Reparation' Calls for Racial Justice in AI | WIRED
Unmasking AI' and the Fight for Algorithmic Justice (The Markup)
Algorithmic Reparation (Big Data & Society)
Timnit Gebru: Ethical AI Requires Institutional and Structural Change
Lessons from Archives: Strategies for Connecting Sociocultural Data in Machine Learning (FAT* '20: Proceedings of the 2020 Conference on Fairness, Accountability, and Transparency)
Written by Eun Seo Jo and Timnit Gebru, this article argues for applying library science data ethics to machine learning data collection.
Terms-we-serve-with: Five Dimensions for Anticipating and Repairing Algorithmic Harm (Big Data & Society)
Eliminating Algorithmic Bias Is Just the Beginning of Equitable AI (Harvard Business Review)
Accountability in Artificial Intelligence (ACLU)
Algorithmic Discrimination Protections from Office of Science and Technology Policy, The White House
The MIT Technology Review series on AI Colonialism
AI Decolonial Manyfesto
Mapping Scholarship on Algorithmic Bias: Conceptualization, Empirical Results, and Ethical Concerns (International Journal of Communication)
<<
Previous:
Human and Environmental Impact of AI
Next:
Books >>