Ethical Questions in the Context of Data Engineering and Machine Learning (Wintersemester 2022/2023)
Dozent:
Dr. Thilo Hagendorff
Allgemeine Information
- Semesterwochenstunden: 2
- ECTS: 3
- Benotet:
Ja
- Einschreibefrist: 01.10.2022 - 31.10.2022
- Prüfungszeitpunkt §9 (4) BAMA-O: 31.03.2023
- Lehrform: Blockseminar
- Belegungsart: Pflichtmodul
- Lehrsprache: Deutsch
- Maximale Teilnehmerzahl: 30
Studiengänge, Modulgruppen & Module
- Data Engineering
- HPI-DA-ERG Ethik, Recht und Gesellschaft
- Software Systems Engineering
- HPI-SSE-EL Ethics, Law and Compliance
Beschreibung
Description
From the perspective of ethics, the compact seminar deals with various topics in the context of Data Engineering, Machine Learning, and the associated (ethical and social) ramifications. The seminar will focus on different fields, ranging from theories of computer and AI ethics to concrete topics such as values in technology, fairness in machine learning, natural language processing, recommender systems, etc. The seminar focuses less on abstract ethical theories from philosophy, but rather on current, genuinely interdisciplinary research fields and papers (e.g. from Critical Data Studies), which deal directly with the intersection of ethics and computer science.
Learning
The purpose of the seminar is to become familiar with issues and methods from the field of technology, AI, and information ethics and to be able to apply them to individual use cases.
Voraussetzungen
The provided references should be read before the start of the seminar so that the papers can be discussed during the seminar. The texts will be made available via Moodle.
Literatur
References
Johnson, Deborah G. (2017): Can Engineering Ethics Be Taught? In The Bridge 47 (1), pp. 59–64.
Chiodo, Maurice; Bursill-Hall, Piers (2018): Ethics In Mathematics Discussion Paper, pp. 1–22.
Brey, Philip (2010): Values in technology and disclosive computer ethics. In: Luciano Floridi (Hg.): The Cambridge Handbook of Information and Computer Ethics. Cambridge, Massachusetts: Cambridge University Press, pp. 41–58.
Birhane, Abeba; Kalluri, Pratyusha; Card, Dallas; Agnew, William; Dotan, Ravit; Bao, Michelle (2021): The Values Encoded in Machine Learning Research. In arXiv: 2106.15590v1, pp. 1–28.
Kitchin, Rob (2017): Thinking critically about and researching algorithms. In: Information, Communication & Society 20 (1), pp. 14–29.
Jobin, Anna; Ienca, Marcello; Vayena, Effy (2019): The global landscape of AI ethics guidelines. In Nature Machine Intelligence 1 (9), pp. 389–399.
Hagendorff, Thilo (2022): A Virtue-Based Framework to Support Putting AI Ethics into Practice. In Philosophy & Technology 35 (3), pp. 1–246.
Morley, Jessica; Floridi, Luciano; Kinsey, Libby; Elhalal, Anat (2020): From What to How. An Overview of AI Ethics Tools, Methods and Research to Translate Principles into Practices. In Science and Engineering Ethics 26, pp. 2141–2168.
Selbst, Andrew D.; boyd, danah; Friedler, Sorelle A.; Venkatasubramanian, Suresh; Vertesi, Janet (2018): Fairness and Abstraction in Sociotechnical Systems. In ACT Conference on Fairness, Accountability, and Transparency (FAT) 1 (1), pp. 1–17.
Milano, Silvia; Taddeo, Mariarosaria; Floridi, Luciano (2020): Recommender systems and their ethical challenges. In AI & SOCIETY - Journal of Knowledge, Culture and Communication 35 (4), pp. 957–967.
Blodgett, Su Lin; Barocas, Solon; Daumé III, Hal; Wallach, Hanna (2020): Language (Technology) is Power: A Critical Survey of “Bias” in NLP. In Dan Jurafsky, Joyce Chai, Natalie Schluter, Joel Tetreault (Eds.): Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics. Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics. Stroudsburg, PA, USA: Association for Computational Linguistics, pp. 5454–5476.
Brundage, Miles; Avin, Shahar; Clark, Jack; Toner, Helen; Eckersley, Peter; Garfinkel, Ben et al. (2018): The Malicious Use of Artificial Intelligence. Forecasting, Prevention, and Mitigation, pp. 1–101.
Zuboff, Shoshana (2015): Big other: surveillance capitalism and the prospects of an information civilization. In: Journal of Information Technology 30, pp. 75–89.
Lern- und Lehrformen
Compact seminar; group discussions; presentations if desired.
Leistungserfassung
Grading is based on the quality of a term paper. The exact criteria according to which the paper will be graded will be discussed in the last session of the seminar.
Termine
time | February 2nd, 2023 | time | February 3rd, 2023 | February 4th, 2023 | February 5th, 2023 |
| | 09:15 to 10:45 | Brey – Values in Technology | Morley et al. – From What to How | Brundage et al. – The Malicious Use of AI |
| | 11:00 to 12:30 | Birhane et al. – Values in Machine Learning | Selbst et al. – Fairness in Sociotechnical Systems | Zuboff – Surveillance Capitalism |
14:00 to 15:30 | Introduction | 13:30 to 15:00 | Kitchin – Thinking Critically about Algorithms | Milano et al. – Recommender systems | Final discussions / seminar papers |
15:45 to 17:15 | Johnson – Can Engineering Ethics Be Taught? | 15:15 to 16:45 | Jobin et al. – AI Ethics Guidelines | Blodgett et al – Bias in NLP | |
17:30 to 19:00 | Chiodo – Ethics in Mathematics | 17:00 to 18:30 | Hagendorff – AI Virtues | | |
Room: H-E.51/52
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