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Auditing Algorithms: On Lessons Learned and the Risks of Data Minimization

Published: 07 February 2020 Publication History

Abstract

In this paper, we present the Algorithmic Audit (AA) of REM!X, a personalized well-being recommendation app developed by Telefónica Innovación Alpha. The main goal of the AA was to identify and mitigate algorithmic biases in the recommendation system that could lead to the discrimination of protected groups. The audit was conducted through a qualitative methodology that included five focus groups with developers and a digital ethnography relying on users comments reported in the Google Play Store. To minimize the collection of personal information, as required by best practice and the GDPR [1], the REM!X app did not collect gender, age, race, religion, or other protected attributes from its users. This limited the algorithmic assessment and the ability to control for different algorithmic biases. Indirect evidence was thus used as a partial mitigation for the lack of data on protected attributes, and allowed the AA to identify four domains where bias and discrimination were still possible, even without direct personal identifiers. Our analysis provides important insights into how general data ethics principles such as data minimization, fairness, non-discrimination and transparency can be operationalized via algorithmic auditing, their potential and limitations, and how the collaboration between developers and algorithmic auditors can lead to better technologies

References

[1]
European Union. 2016. The General Data Protection Regulation, 2016/679. Available at: https://eur-lex.europa.eu/eli/reg/2016/679/oj
[2]
Eubanks, Virginia. 2018. Automating Inequality. New York: St. Martin's Press.
[3]
O'Neil, C. 2016. Weapons of math destruction: How big data increases inequality and threatens democracy. New York: Broadway Books.
[4]
Pasquale, Frank. 2015. The Black Box Society. Cambridge: Harvard University Press.
[5]
Burrell, J. 2016. How the machine 'thinks': Understanding opacity in machine learning algorithms, Big Data & Society.
[6]
Holstein, K., Wortman Vaughan, J., Daumé III, H., Dudik, M., and Wallach, H. 2019. Improving fairness in machine learning systems: What do industry practitioners need? In Proceedings of the 2019 CHI Conference on Human Factors in Computing Systems (p. 600). ACM.
[7]
Woodruff, A.; Sarah E Fox, Steven Rousso-Schindler, and Jeffrey Warshaw. 2018. A qualitative exploration of perceptions of algorithmic fairness. In Proceedings of the 2018 CHI Conference on Human Factors in Computing Systems (CHI 2018). ACM, 656.
[8]
Selbst, A.D. and Barocas, S., 2018. The intuitive appeal of explainable machines. Fordham L. Rev., 87, p.1085.
[9]
Narayanan, A. 2018. Tutorial: 21 definitions of fairness and their politics. Conference on Fairness, Accountability, and Transparency, NYC Feb 23.
[10]
Lippert-Rasmussen, K. 2013. Born Free and Equal? A Philosophical Inquiry Into the Nature of Discrimination. Oxford: Oxford University Press.
[11]
Castillo, C. 2018. Algorithmic Discrimination. Assessing the impact of machine intelligence on human behaviour: an interdisciplinary endeavor. In Proceedings of HUMAINT Workshop.
[12]
Binns, R. 2018. Algorithmic Accountability and Public Reason, Philos. Technol., 31 (4), 543--556.
[13]
Dwork, C., Hardt, M., Pitassi, T., Reingold, O., & Zemel, R. 2012. Fairness through awareness. In Proceedings of the 3rd innovations in theoretical computer science conference (pp. 214--226). ACM.
[14]
Shimao, H.; Komiyama, J.; Khern-am-nuai, W; Kannan, Karthik Natarajan. 2019. Strategic Best-Response Fairness in Fair Machine Learning Algorithms. Available at SSRN: https://ssrn.com/abstract=3389631
[15]
Barocas, S. and Selbst, A. 2016. Big Data's Disparate Impact. California Law Review.
[16]
Resnick, P., and Varian, H. R. 1997. Recommender Systems. Special issue of Communications of the ACM. 40(3).
[17]
Sarwar, B.; Karypis, G., Joseph Konstan, and John Riedlfsarwar. 2001. Item-Based Collaborative Filtering Recommendation Algorithms. In Proc. of the 10th International WWW Conference.
[18]
Abdollahpouri, H.; Burke, R., and Mobasher, B. 2019. Managing Popularity Bias in Recommender Systems with Personalized Re-ranking. Paper presented in AAAI Florida Artificial Intelligence Research Society (FLAIRS '19), May18--22.
[19]
Tsintzou, V., Pitoura, E., & Tsaparas, P. 2018. Bias Disparity in Recommendation Systems. arXiv preprint arXiv:1811.01461.
[20]
Hajian, S., Bonchi, F., & Castillo, C. (2016). Algorithmic bias: From discrimination discovery to fairness-aware data mining. In Proceedings of the 22nd ACM SIGKDD international conference on knowledge discovery and data mining (pp. 2125--2126). ACM.
[21]
Baer, T. 2019. Understand, Manage, and Prevent Algorithmic Bias. Berkeley, CA: Apress.
[22]
Krieg, L. J; Berning, M and Hardon, A. 2017. Anthropology with algorithms? An exploration of online drug knowledge using digital methods, Medicine Anthropology Theory 4 (3): 21--52.

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  • (2024)Güvenilir Yapay Zeka ve İç DenetimTHRUSTWORTHY ARTIFICIAL INTELLIGENCE AND INTERNAL AUDITDenetişim10.58348/denetisim.1384391(112-126)Online publication date: 31-Jan-2024
  • (2023)The Role of Explainable AI in the Research Field of AI EthicsACM Transactions on Interactive Intelligent Systems10.1145/359997413:4(1-39)Online publication date: 1-Jun-2023
  • (2023)Demo: Data Minimization and Informed Consent in Administrative FormsProceedings of the 2023 ACM SIGSAC Conference on Computer and Communications Security10.1145/3576915.3624363(3676-3678)Online publication date: 15-Nov-2023
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  1. Auditing Algorithms: On Lessons Learned and the Risks of Data Minimization

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    cover image ACM Conferences
    AIES '20: Proceedings of the AAAI/ACM Conference on AI, Ethics, and Society
    February 2020
    439 pages
    ISBN:9781450371100
    DOI:10.1145/3375627
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    Publication History

    Published: 07 February 2020

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    Author Tags

    1. ai, recommender systems
    2. algorithms
    3. bias
    4. data ethics
    5. gdpr

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    Overall Acceptance Rate 61 of 162 submissions, 38%

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    View all
    • (2024)Güvenilir Yapay Zeka ve İç DenetimTHRUSTWORTHY ARTIFICIAL INTELLIGENCE AND INTERNAL AUDITDenetişim10.58348/denetisim.1384391(112-126)Online publication date: 31-Jan-2024
    • (2023)The Role of Explainable AI in the Research Field of AI EthicsACM Transactions on Interactive Intelligent Systems10.1145/359997413:4(1-39)Online publication date: 1-Jun-2023
    • (2023)Demo: Data Minimization and Informed Consent in Administrative FormsProceedings of the 2023 ACM SIGSAC Conference on Computer and Communications Security10.1145/3576915.3624363(3676-3678)Online publication date: 15-Nov-2023
    • (2023)Distributed Data Minimization for Decentralized Collaborative Filtering SystemsProceedings of the 24th International Conference on Distributed Computing and Networking10.1145/3571306.3571400(140-149)Online publication date: 4-Jan-2023
    • (2023)Algorithmic audits of algorithms, and the lawAI and Ethics10.1007/s43681-023-00343-z4:4(1365-1375)Online publication date: 27-Sep-2023
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    • (2023)Secure Data Analysis and Data PrivacySecurity and Risk Analysis for Intelligent Edge Computing10.1007/978-3-031-28150-1_7(137-153)Online publication date: 25-Jun-2023
    • (2022)Locality of Technical Objects and the Role of Structural Interventions for Systemic ChangeProceedings of the 2022 ACM Conference on Fairness, Accountability, and Transparency10.1145/3531146.3534646(2327-2341)Online publication date: 21-Jun-2022
    • (2022)Trustworthy Artificial Intelligence: A ReviewACM Computing Surveys10.1145/349120955:2(1-38)Online publication date: 18-Jan-2022
    • (2022)Continuous Auditing of Artificial Intelligence: a Conceptualization and Assessment of Tools and FrameworksDigital Society10.1007/s44206-022-00022-21:3Online publication date: 4-Oct-2022
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