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Resource summaries, currently in progress

Google Drive link to resource summaries

Proposed Ethics in Data Science Resource Links

DATA SCIENCE CODE OF PROFESSIONAL CONDUCT, Prepared by the Data Science Association

Ethical Guidelines for Statistical Practice, Prepared by the Committee on Professional Ethics of the American Statistical Association

Using Ethical Reasoning to Amplify the Reach and Resonance of Professional Codes of Conduct in Training Big Data Scientists

Data Science Ethical Framework

Derman, E. Wilmott, P. (2009). The financial modeler’s manifesto

Taleb, N., Sandis, C. (2013). The skin in the game heuristic for protection against tail events

Ethical OS Toolkit - Anticipating the future impact of today's technology

When Data Science Destabilizes Democracy and Facilitates Genocide - by Rachel Thomas

Algorithmic governance

The Public Voice Coalition - Universal Guidelines for Artificial Intelligence - These guidelines, endorsed by Sir Tim Berners-Lee, cover basic ethical principles that should guide all AI development. They list 12 principles that all AI development should answer to in order to "maximize the benefits of AI, to minimize the risk, and to ensure the protection of human rights."

Monmonier, M. (2005). Lying with Maps. Statistical Science, 20(3), 215-222. pdf book review

Ananny, M. (2016). Toward an Ethics of Algorithms. Science, Technology & Human Values, 41(1), 93-117. doi:10.1177/0162243915606523

Mutlu, C. E. (2015). Of Algorithms, Data and Ethics: A Response to Andrew Bennett1. Millennium (03058298), 43(3), 998-1002. doi:10.1177/0305829815581536

Ziewitz, M. (2016). Governing Algorithms. Science, Technology & Human Values, 41(1), 3. doi:10.1177/0162243915608948

Diakopoulos, N. (2016). Accountability in Algorithmic Decision Making. Communications Of The ACM, 59(2), 56-62. doi:10.1145/2844110

Mikton, J. (2015). The Internet of Things: ethics of our connectivity. International Schools Journal, 35(1), 56.

Tewell, E. e. (2016). Toward the Resistant Reading of Information: Google, Resistant Spectatorship, and Critical Information Literacy. Portal: Libraries & The Academy, 16(2), 289-310.

Kraemer, F., van Overveld, K., & Peterson, M. (2011). Is there an ethics of algorithms?. Ethics & Information Technology, 13(3), 251. doi:10.1007/s10676-010-9233-7

Neyland, D. (2016). Bearing Account-able Witness to the Ethical Algorithmic System. Science, Technology & Human Values, 41(1), 50. doi:10.1177/0162243915598056

Raymond, A. H., & Shackelford, S. J. (2014). TECHNOLOGY, ETHICS, AND ACCESS TO JUSTICE: SHOULD AN ALGORITHM BE DECIDING YOUR CASE?. Michigan Journal Of International Law, 35(3), 485-524.

Moreau, N. (2008). Is It Ethical for Patents to Be Issued for the Computer Algorithms that Affect Course Management Systems for Distance Learning?. American Journal Of Distance Education, 22(4), 187-194.

Dobson, J. E. (2015). Can an algorithm be disturbed? Machine learning, intrinsic criticism, and the digital humanities. College Literature, (4), 543.

Grubaugh, C. (2014). The ethical obligations of a banal, content apocalypse. Kybernetes, 43(6), 947. doi:10.1108/K-05-2013-0098

Kijowski, D., Dankowicz, H., & Loui, M. (2013). Observations on the Responsible Development and Use of Computational Models and Simulations. Science & Engineering Ethics, 19(1), 63. doi:10.1007/s11948-011-9291-1

Al-Saggaf, Y., & Islam, M. Z. (2015). Data Mining and Privacy of Social Network Sites' Users: Implications of the Data Mining Problem. Science And Engineering Ethics, (4), 941. doi:10.1007/s11948-014-9564-6

Ethics & Data Science - Jeff Hammerbacher

Majken Sander and Joerg Blumtritt – algorithm ethics = value judgements

algorithmic hiring: Zeynep Tufekci

Understanding Bias in Machine Learning -- Jindong Gu and Daniela Oelke This article explores three ways bias can be introduced to ML algorithms from the perspective of an ML practitioner. Bias plays a crucial role in influencing algorithmic decision-making (e.g. due to an imbalanced dataset, the algorithm can start to form racist stereotypes), which makes it an important topic to consider for the ethics of data science.

Civic Hacking

Schrock, A. R. (2016) Civic hacking as data activism and advocacy: A history from publicity to open government data. New Media & Society, 18, 581-599.

Data Privacy

Data Breaches

Bad examples, horror stories

Incorporate practices into a reference methodology - CRISP-DM

CRSIP-DM 1.0

Data ethics case studies