Skip to Main Content

Inclusive and Responsible Dataset Usage

Information about getting started on working with data in an inclusive and responsible manner.

Bibliography

Ciston S. (2023). “A Critical Field Guide for Working with Machine Learning Datasets.” Crawford K and Ananny M, Eds., Knowing Machines project. https://knowingmachines.org/critical-field-guide

Ciston S. (2021). “Intersectional AI Toolkit,” Intersectional AI Toolkit. https://intersectionalai.com/

Gebru T, et. al. (2020). “Datasheets for Datasets,” ArXiv180309010 Cs, Mar. 2020, http://arxiv.org/abs/1803.09010

GPAI (2022). Data Justice: Data Justice in Practice: A Guide for Developers, Report, November 2022, Global Partnership on AI. https://advancingdatajustice.org/data-justice-in-practice-guides/

Engine Room. (n.d.). Responsible Data Handbook. https://the-engine-room.github.io/responsible-data-handbook/

Floridi, L., & Cowls, J. (2019). A United Framework of Five Principles for Ai in Society. Harvard Data Science Review, 1(1). https://philarchive.org/rec/FLOAUF

Hasselbalch, G. (2019). Making sense of data ethics. The powers behind the data ethics debate in European policymaking. Internet Policy Review, 8(2). https://doi.org/10.14763/2019.2.1401

Howard, S.A., & Knowlton, S.A. (2018). Browsing through Bias: The Library of Congress Classification and Subject Headings for African American Studies and LGBTQIA Studies. Library Trends 67(1), 74-88. https://doi:10.1353/lib.2018.0026

McKinney, W. (n.d.). Python for Data Analysis, 3E (Open 3rd Edition). O’Reilly. Retrieved July 3, 2022, from https://wesmckinney.com/book/

Miceli, M., & Posada, J. (2022, May 30). The data-production dispositif: How to analyze power in data production for machine learning. Schwartz Reisman Institute for Technology and Society. https://srinstitute.utoronto.ca/news/the-data-production-dispositif

Miceli, M., Posada, J., & Yang, T. (2022). Studying Up Machine Learning Data: Why Talk About Bias When We Mean Power? Proceedings of the ACM on Human-Computer Interaction, 6(GROUP), 1–14. https://doi.org/10.1145/3492853

Miyazaki, S. (2016). Algorhythmic ecosystems: Neoliberal couplings and their pathogenesis 1960–present. In Algorithmic Cultures (pp. 140–151). Routledge. https://doi-org.libproxy1.usc.edu/10.4324/9781315658698

Onuoha, Mimi. (2016). “The Point of Collection.” Data and Society: Points. Feb 10, 2016. https://points.datasociety.net/the-point-of-collection-8ee44ad7c2fa

Padilla, T. (2021, October 13). Responsible Operations: Data Science, Machine Learning, and AI in Libraries. OCLC. https://www.oclc.org/research/publications/2019/oclcresearch-responsible-operations-data-science-machine-learning-ai.html

School of Data. (n.d.). "Glossary." School of Data. https://schoolofdata.org/handbook/appendix/glossary/

Steven A. Knowlton MLIS (2005) Three Decades Since Prejudices and Antipathies: A Study of Changes in the Library of Congress Subject Headings, Cataloging & Classification Quarterly, 40:2, 123-145. https://doi.org/10.1300/J104v40n02_08

Training the Archive. (n.d.). "Glossary." Training the Archive. https://trainingthearchive.ludwigforum.de/en/glossary/

University of Helsinki, Minna Learn. (n.d.) "Elements of AI." https://course.elementsofai.com/

University of Helsinki, Minna Learn. (n.d.) "Ethics of AI." https://ethics-of-ai.mooc.fi/

Younes, L. (n.d.). Data Acquisition for Beginners. Exposing the Invisible Kit - Tactical Tech. https://kit.exposingtheinvisible.org/en/how/data-acquisition.html