References
Aaron Klein. (2020). Reducing bias in AI-based financial services. Brookings. July 10, 2020.
Aaron Klein. Credit denial in the age of AI. Brookings. April 11, 2019.
Akshat Pandey and Aylin Caliskan. Disparate Impact of Artificial Intelligence Bias in Ridehailing Economy’s Price Discrimination Algorithms. 2021. ACM ISBN 978-1-4503-8473-5/21/05.
Alekh Agarwal, Alina Beygelzimer, Miroslav Dudík, John Langford, & Hanna Wallach. A Reductions Approach to Fair Classification, 35th International Conference on Machine Learning, ICML 2018, Stockholm, Sweden, July 2018.
Algorithms and automated decision-making in the context of crime prevention. ARTICLE19.com. December 02, 2016.
Amazon Press Center. (2000). Amazon.com Issues Statement Regarding Random Price Testing. Sep. 2000.
Amit Datta, Michael Carl Tschantz, and Anupam Datta. (2015). Automated experiments on ad privacy settings. Proceedings on Privacy Enhancing Technologies, 2015(1), 92–112.
Andrea Romei and Salvatore Ruggieri. A multidisciplinary survey on discrimination analysis. 2014. The Knowledge Engineering Review, 29(5):582–638.
Andrew D. Selbst. (2017). Disparate Impact in Big Data Policing. Ga. L. Rev., 52, 109.
Angela Chen. (2017). AI picks up racial and gender biases when learning from what humans write. The Verge. April. 2017.
Anja Lambrecht and Catherine Tucker. Algorithm-Based Advertising: Unintended Effects and the Tricky Business of Mitigating Adverse Outcomes. NIM Marketing Intelligence Review, vol.13, no.1, 2021, pp.24-29.
Ankit Gupta. What is Deep Learning and Neural Network. The windows club. November 8, 2020.
Article 5(1) (a)–5(1)(f) GDPR; article 5, 7, and 10 COE Data Protection Convention 2018. Article 5(2) of the GDPR; ar-ticle 10(1) COE Data Protection Convention 2018.
Arun Kumar. What are Machine Learning and Deep Learning in Artificial Intelligence. The windows club. February 3, 2020.
BBC News. (2000). Amazon’s Old Customers ‘Pay More’. Sep. 2000.
Ben Naismith, Na-Rae Han, Alan Juffs, Brianna Hill, and Daniel Zheng. (2018). Accurate Measurement of Lexical Sophistication with Reference to ESL Learner Data. Proceedings of 11th International Conference on Educational Data Mining, 259–265.
Benjamin Wilson, Judy Hoffman, and Jamie Morgenstern. (2019). Predictive Inequity in Object Detection. arXiv:1902. 11097.
Bernard Caillaud & Romain De Nijs. (2013). Strategic Loyalty Reward in Dynamic Price Discrimination. Oct. 2013.
Brent Bridgeman, Catherine Trapani, and Yigal Attali. (2009, April 13-17). Considering fairness and validity in evaluating automated scoring. Annual Meeting of the National Council on Measurement in Education (NCME), San Diego, CA, United States.
Brent Bridgeman, Catherine Trapani, and Yigal Attali. (2012). Comparison of Human and Machine Scoring of Essays: Differences by Gender, Ethnicity, and Country. Applied Measurement in Education, 25(1), 27–40.
Brian d'Alessandro, Cathy O'Neil, and Tom LaGatta. (2017). Conscientious classification: a data scientist’s guide to discrimination-aware classification. Big Data. 2017; 5(2):120–34.
Caspar Siegert & Robert Ulbrichtb. (2020). Dynamic oligopoly pricing: evidence from the airline industry. Int. J. Indus. Organ. 71, 1026–1039.
Christian Sandvig, Karrie Karahalios, and Cedric Langbort, Uncovering Algorithms: Looking Inside the Facebook News Feed, In the Berkman Center Seminar Series: Berkman Center for Internet & Society, Harvard University. 2014.
Christian Sandvig, Kevin Hamilton, Karrie Karahalios, & Cedric Langbort. Auditing Algorithms: Research Methods for Detecting Discrimination on Internet Platforms. 64th Annual Meeting of the International Communication Association. 2014.
Cleber Ikeda. (2021). Do retailers have a recommendation bias problem? RetailWire. Dec 17, 2021.
Constance E Helfat, and Margaret A. Peteraf. (2015). Managerial cognitive capabilities and the microfoundations of dynamic capabilities. Strategic Management Journal, 36(6), 831–850.
Constance E. Helfat and Margaret A. Peteraf. (2003). The dynamic resource-based view: Capability lifecycles. Strategic Management Journal, 24(10), 997–1010.
Cynthia Dwork, Moritz Hardt, ToniannPitassi, Omer Reingold, and Rich Zemel. (2012). Fairness through awareness. arXiv:1104.3913.
Danton S. Char, Nigam H. Shah and David Magnus. (2018). Implementing Machine Learning in Health Care-Addressing Ethical Challenges. 2018 Mar 15: 378(11): 981-983.
David Danks and Alex John London. Algorithmic bias in autonomous systems. In: Proceedings of the Twenty-Sixth International Joint Conference on Artificial Intelligence, 4691–97. 2017. Melbourne, Australia: International Joint Conferences on Artificial Intelligence Organization.
Devah Pager. (2007). The Use of Field Experiments for Studies of Employment Discrimination: Contributions, Critiques, and Directions for the Future. The Annals of the American Academy of Political and Social Science 609, no. 1 (2007): 104- 33.
Donna M. Christensen, Jim Manley, and Jason Resendez. Medical Algorithms Are Failing Communities of Color. Health Affairs Forefront. September 9, 2021.
ECtHR, Biao v. Denmark (Grand Chamber), No. 38590/10, 24 May 2016, para. 89.
ECtHR, Biao v. Denmark (Grand Chamber), No. 38590/10, 24 May 2016, para. 103.
ECtHR, Biao v. Denmark (Grand Chamber), No. 38590/10, 24 May 2016, paras. 91 and 92. I deleted internal citations and numbering from the quotation.
ECtHR, Biao v. Denmark (Grand Chamber), No. 38590/10, 24 May 2016, para. 90.
Elizabeth Dwoskin. (2015). How social bias creeps into web technology. Wall Street Journal. August 2015.
Executive Office of the President. Big Data: Seizing opportunities, preserving values. Washington D.C.: White House. 2014.
Frank A. Wolak. (2016). Designing nonlinear price schedules for urban water utilities to balance revenue and conservation goals. National Bureau of Economic Research Working Paper 22503, 1–41.
Frank Pasquale. (2010). Beyond Innovation and Competition: The Need for Qualified Transparency in Internet Intermediaries. 104 Northwestern University Law Review 105. (2010).
Frank Pasquale. The black box society: The secret algorithms that control money and information. 2015. Cambridge, MA: Harvard University Press.
Frederik Zuiderveen Borgesius and Joost Poort. (2017). Online price discrimination and EU data privacy law. J. Cons. Policy 40, 347–366.
Frijters Paul. Discrimination and job-uncertainty. 1996. Journal of Economics Behavior & Organizations, 36(4):433-446.
Hale M Thompson, Brihat Sharma, Sameer Bhalla, Randy Boley, Connor McCluskey, Dmitriy Dligach, Matthew M Churpek, Niranjan S Karnik, and Majid Afshar. Bias and fairness assessment of a natural language processing opioid misuse classifier: detection and mitigation of electronic health record data disadvantages across racial subgroups. J Am Med Inform Assoc 2021 Oct 12; 28(11):2393-2403.
Hannah Devlin. AI programs exhibit racial and gender biases. The guardian.com. April 2017.
Hazel Lim and ArazTaeihagh. An examination of discrimination and safety and liability risks stemming from algorithmic decision-making in Avs.2019. The Fourth International Conference on Public Policy (ICPP4) June 26-28, 2019 – Montreal, Canada.
Henry Anderson, Afshan Boodhwani, and Ryan S. Baker. (2019). Assessing the Fairness of Graduation Predictions. Proceedings of the 12th International Conference on Educational Data Mining, 488–491.
Hin-Yan Liu. (2018). Three types of structural discrimination introduced by autonomous vehicles. Univ. Calif. Davis Law Rev. Online 2018, 51, 149–180.
J. Kleinberg, J. Ludwig, S. Mullainathan, Ashesh Rambachan. Advances in big data research in economics: Algorithmic fairness. AEA Papers and Proceedings 2018, 108: 22–27.
James Wexler. The What-If Tool: Code-Free Probing of Machine Learning Models. Sep 11, 2018.
Jeremy Hermann. (2019). Scaling Machine Learning at Uber with Michelangelo. Uber Blog. Nov 2, 2018.
Jinyan Zang. How Facebook’s Advertising Algorithms Can Discriminate by Race and Ethnicity. Technology Science. October 19, 2021.
Johannes Himmelreich. (2018). Never Mind the Trolley: The Ethics of Autonomous Vehicles in Mundane Situations. Ethical Theory and Moral Practice. Vol. 21, No. 3, Special Section: BSET Papers (June 2018), pp. 669-684 (16 pages). Published By: Springer.
Josh Gardner, Christopher Brooks, Juan Miguel Andres, Ryan S. Baker. (2018). MORF: A Framework for Predictive Modeling and Replication at Scale with Privacy-Restricted MOOC Data. 2018 IEEE International Conference on Big Data (Big Data), 3235–3244.
Joy Buolamwini and Timnit Gebru. (2018). Gender shades: Intersectional accuracy disparities in commercial gender classification. In Conference on fairness, accountability and transparency, 2018. pp. 77–91.
Julia Angwin, Lauran Kirchner, Jeff Larson, and Surya Mattu. (2016). Machine Bias: There’s software used across the country to predict future criminals. And it’s biased against blacks. ProPublica. May 23, 2016.
Julia Angwin, Lauran Kirchner, Jeff Larson, and Surya Mattu. (2016). Machine Bias: There’s software used across the country to predict future criminals. And it’s biased against blacks. ProPublica. May 23, 2016.
Katherine J. Igoe. Algorithmic Bias in Health Care Exacerbates Social Inequities — How to Prevent It. March 12, 2021.
Kevin Todd. The Problem of Algorithmic Bias in Autonomous Vehicles. 2019. University of Michigan Law School: Law and Mobility Program and the Journal of Law and Mobility. March 2019.
Kimberle Crenshaw. (1991). Mapping the margins: Intersectionality, identity politics, and violence against women of color. Stanford Law Review, 43(6), 1241–1300.
Lance Eliot. (2020). Overcoming Racial Bias in AI Systems and Startlingly Even in AI Self-Driving Cars. Forbes. Jan 4, 2020.
Latanya Sweeney. (2013). Discrimination in online ad delivery. arXiv:1301.6822.
Laura W. Murphy and Megan Cacace. Facebook’s Civil Rights Audit – Final Report. July 8, 2020.
Le Chen, Alan Mislove, and Christo Wilson. (2015). Peeking Beneath the Hood of Uber. In Proceedings of the 2015 Internet Measurement Conference (Tokyo, Japan) (IMC ’15). Association for Computing Machinery, New York, NY, USA, 495–508.
Logan Koepke and David Robinson. (2016). Stuck in a pattern: Early evidence on ‘‘predictive policing’’ and civil rights. Issue Lab Aug 01, 2016.
Lokke Moerel. Algorithms can reduce discrimination, but only with proper data.2108. Publ. 16 Nov 2018 by IAPP, 2018.
Mark Armstrong and John Vickers. (2001). Competitive price discrimination. RAND J. Econ. 32, 579–605.
Matthew Crain. (2016). The limits of transparency: data brokers and com- modification. New Media & Society, 20(1), 88–104.
Matthew Kay, Cynthia Matuszek, and Sean A. Munson. (2015). Unequal Representation and Gender Stereotypes in Image Search Results for Occupations. Proceedings of the 33rd Annual ACM Conference on Human Factors in Computing Systems April 2015 Pages 3819–3828.
Michael Feldman, Sorelle Friedler, John Moeller, Carlos Scheidegger, and Suresh Venkatasubramanian. (2015). Certifying and removing disparate impact. arXiv:1412.3756.
Michael Selmi. (2011). Theorizing Systemic Disparate Treatment Law: After Wal-Mart v. Dukes, 32 BERKELEY J. EMP. & LAB. L. 477, 478, 481–83 (2011).
Michael Veale and Lilian Edwards. Clarity, Surprises, and Further Questions in the Article 29 Working Party Draft Guidance on Automated Decision-Making and Profiling. Computer Law & Security Review 34 (2018): 398.
Mitch Smith. (2016). In Wisconsin, a backlash against using data to fore- tell defendants’ futures. The New York Times. June 22, 2016.
Neil Howe. (2017). A Special Price Just for You. Forbes. Nov. 2017.
Nicol Turner Lee. Inclusion in Tech: How Diversity Benefits All Americans. Subcommittee on Consumer Protection and Commerce, United States House Committee on Energy and Commerce (2019).
Nina Grgić-Hlača, Elissa M. Redmiles, Krishna P. Gummadi, and Adrian Weller. (2018). Human perceptions of fairness in algorithmic decision making: a case study of criminal risk prediction. ArXiv:1802.09548.
Oliver Hinz, II-Horn Hann, and Martin Spann. (2011). Price discrimination in E-commerce? An examination of dynamic pricing in name-your-own-price markets. MIS Q. 35, 81–98.
Paul S. Adler and Seok-Woo Kwon. (2002). Social capital: Prospects for a new concept. Academy of Management Review, 27(1), 17–40.
Phillip Leslie. (2004). Price discrimination in Broadway theater. RAND J. Econ. 35, 520–541.
Puneet Kaur, Amandeep Dhir, Anushree Tandon, Ebtesam A. Alzeibyg, & Abeer Ahmed Abohassan. (2021). A systematic literature review on cyberstalking: an analysis of past achievements and future promises. Technol. Forecast. Soc. Change. 163, 120426.
Qian Hu and H. Rangwala. (2020). Towards Fair Educational Data Mining: A Case Study on Detecting At-risk Students. Proceedings of the 13th International Conference on Educational Data Mining (EDM 2020), 431–437.
Rebecca Wexler. (2017). Code of Silence. Washington Monthly. June 11, 2017.
Renzhe Yu, Hansol Lee, and René F. Kizilcec. (2021). Should College Dropout Prediction Models Include Protected Attributes? In Proceedings of the Eighth ACM Conference on Learning@ Scale (pp. 91-100).
Retail News Insider. (2014). In-Store Tracking: Personalization Innovation or Privacy Invasion? Retail News. May 2014.
Ricci v. DeStefano, 557 U.S. 557 (2009).
Richard P. Castanias and Constance E. Helfat. (2001). The managerial rents model: Theory and empirical analysis. Journal of Management, 27(6), 661–678.
Rochelle, M. (2019). Press & media. Wasteless.
Rodrigo Ochigame. The invention of “Ethical AI”. The Intercept.com. December 20, 2019.
Romana J. Khan and Dipak C. Jain. (2005). An empirical analysis of price discrimination mechanisms and retailer profitability. J. Market. Res. 42, 516–524.
Ryan S. Baker and Aaron Hawn. Algorithmic Bias in Education. International Journal of Artificial Intelligence in Education (2021).
Safiya Umoja Noble. Algorithms of oppression: how search engines reinforce racism. New York University Press, New York. 2018.
Sam Corbett-Davies, Emma Pierson, Avi Feller, Sharad Goel, and Aziz Huq. Algorithmic Decision Making and the Cost of Fairness. ArXiv:1701.08230 [Cs, Stat], January 27, 2017.
Sandra Wachter, Brent Mittelstadt, and Luciano Floridi. (2017). Why a Right to Explanation of Automated Decision-making Does Not Exist. International Data Privacy Law, Volume 7, Issue 2, May 2017, Pages 76–99.
Sarah Brayne. (2017). Big Data surveillance: the case of policing. American Sociological Review, 2017, Vol. 82(5) 977–1008.
Seeta Pena Gangadharan. Data and Discrimination: Collected Essays. New America’s Open Technology Institute. 2014.
Shimin Kai, Juan Miguel Andres, Luc Paquette, Ryan S. Baker, Kati Molnar, Harriet Watkins, and Michael Moore. (2017). Predicting Student Retention from Behavior in an Online Orientation Course. Proceedings of the 10th International Conference on Educational Data Mining, 250–255.
Siddhartha Banerjee, Ramesh Johari, and Carlos Riquelme. (2016). Dynamic Pricing in Ridesharing Platforms. SIGecom Exch. 15, 1 (Sept. 2016), 65–70.
Solon Barocas & Andrew D. Selbst. Big data’s disparate impact. Calif. Law Rev. 2014, 104, 671–732.
Solon Barocas and Andrew D. Selbst. (2016). Big data's disparate impact. Cal. L. Rev., 104, 671.
Structured vs. Unstructured Data: A Complete Guide. Talend.com.2022.
Taylor Charles. A Secular Age. Cambridge, MA: Harvard University Press, 2009.
Terrell Mcsweeny & Brian O’DEA. The Implications of Algorithmic Pricing for Coordinated Effects Analysis and Price Discrimination Markets in Antitrust Enforcement. Antitrust, Vol. 32, No. 1, Fall 2017.
The two leading Supreme Court cases on systemic discrimination are International Brotherhood of Teamsters v. United States, 431 U.S. 324 (1977), and Hazelwood School District v. United States, 433 U.S. 299 (1977).
Theodore Kim. Op-Ed: AI flaws could make your next car racist. Los Angeles Times. Oct 2021.
Theodore M. Porter (1996). Trust in numbers. The pursuit of objectivity in science and public life (p. 1996). Princeton, NJ: Princeton University Press.
Thomas Petzinger Jr. (1996). Hard landing: the epic contest for power and profits that plunged the airlines into chaos. New York: Rando, House.
Tim Brennan, William Dieterich, and Beate Ehret. (2009). Evaluating the Predictive Validity of the COMPAS Risk and Needs Assessment System. Criminal Justice and Behavior, 36 (2009): 21–40.
Tobias Berg, Valentin Burg, Ana Gombovic, and Manju Puri. On the Rise of the FinTechs—Credit Scoring using Digital Footprints. FDIC CFR WP 2018-04.
Tolga Bolukbasi, Kai-Wei Chang, James Zou, Venkatesh Saligrama, and Adam Kalai. (2016). Man is to Computer Programmer as Woman is to Homemaker? Debiasing Word Embeddings. Available via arXiv:1607.06520v1 [cs.CL] 21 Jul 2016.
Trishan Panch, Heather Mattie, Rifat Atun. Artificial intelligence and algorithmic bias: implications for health systems. J Glob Health. 2019 Dec; 9(2): 020318.
Ulrich Leicht‑Deobald, Thorsten Busch, Christoph Schank, Antoinette Weibel, Simon Schafheitle; Isabelle Wildhaber; Gabriel Kasper. The Challenges of Algorithm‑Based HR Decision‑Making for Personal Integrity. Journal of Business Ethics, (2019) 160:377–392.
United States v. Brennan, 650 F.3d 65, 109–14 (2d Cir. 2011); Briscoe v. City of New Haven, 654 F.3d 200, 205–09 (2d Cir. 2011); Maraschiello v. City of Buffalo Police Dep’t, 709 F.3d 87, 95 (2d Cir. 2013).
Virginia Eubanks. Automating inequality. How high-tech tools profile, police, and punish the poor. St Martin’s Publishing, New York. 2018.
YooJung Choi, Golnoosh Farnadi, Behrouz Babaki, and Guy Van den Broeck. Learning Fair Naive Bayes Classifiers by Discovering and Eliminating Discrimination Patterns. In Proc. AAAI Conference on Artificial Intelligence, AAAI 2020, New York, NY, February 2020.
Zen Soo. (2017). Bingo Box to expand its unstaffed store concept beyond mainland China. South China Morning Post. Nov. 2017.
Zhiyan Wu, Yuan Yang, Jiahui Zhao, and Youqing Wu. (2022). The Impact of Algorithmic Price Discrimination on Consumers’ Perceived Betrayal. 2022. Front. Psychol. 13:825420.
Ziad Obermeyer, Brian Powers, Christine Vogeli, and Sendhil Mullainathan. Dissecting racial bias in an algorithm used to manage the health of populations. 2019. Science 366:447–453.
Zied Obermeyer, Brian Powers, Cristine Vogeli, Sendhil Mullainathan. Dissecting racial bias in an algorithm used to manage the health of populations. Science 2019 Oct 25; 366(6464):447-453.