A Unified Framework of Five Principles for AI in Society

Artificial Intelligence (AI) is already having a major impact on society. As a result, many organizations have launched a wide range of initiatives to establish ethical principles for the adoption of socially beneficial AI. Unfortunately, the sheer volume of proposed principles threatens to overwhelm and confuse. How might this problem of ‘principle proliferation’ be solved? In this paper, we report the results of a fine-grained analysis of several of the highest-profile sets of ethical principles for AI. We assess whether these principles converge upon a set of agreed-upon principles, or diverge, with significant disagreement over what constitutes ‘ethical AI.’ Our analysis finds a high degree of overlap among the sets of principles we analyze. We then identify an overarching framework consisting of five core principles for ethical AI. Four of them are core principles commonly used in bioethics: beneficence, non-maleficence, autonomy, and justice. On the basis of our comparative analysis, we argue that a new principle is needed in addition: explicability, understood as incorporating both the epistemological sense of intelligibility (as an answer to the question ‘how does it work?’) and in the ethical sense of accountability (as an answer to the question: ‘who is responsible for the way it works?’). In the ensuing discussion, we note the limitations and assess the implications of this ethical framework for future efforts to create laws, rules, technical standards, and best practices for ethical AI in a wide range of contexts.KeywordsAccountability; Autonomy; Artificial Intelligence; Beneficence; Ethics; Explicability; Fairness; Intelligibility; Justice; Non-maleficence.

[1]  Luciano Floridi,et al.  From What to How: An Initial Review of Publicly Available AI Ethics Tools, Methods and Research to Translate Principles into Practices , 2019, Science and Engineering Ethics.

[2]  Luciano Floridi,et al.  What the Near Future of Artificial Intelligence Could Be , 2019, Philosophy & Technology.

[3]  Thilo Hagendorff,et al.  The Ethics of AI Ethics: An Evaluation of Guidelines , 2019, Minds and Machines.

[4]  L. Floridi,et al.  Artificial Intelligence Crime: An Interdisciplinary Analysis of Foreseeable Threats and Solutions , 2019, Science and Engineering Ethics.

[5]  Luciano Floridi,et al.  Translating Principles into Practices of Digital Ethics: Five Risks of Being Unethical , 2019, Philosophy & Technology.

[6]  Mariarosaria Taddeo,et al.  Designing AI for Social Good: Seven Essential Factors , 2019, SSRN Electronic Journal.

[7]  Luciano Floridi,et al.  From What to How. An Overview of AI Ethics Tools, Methods and Research to Translate Principles into Practices , 2019, ArXiv.

[8]  Francesco Corea,et al.  AI Knowledge Map: How to Classify AI Technologies , 2018, Studies in Big Data.

[9]  Francesca Rossi,et al.  AI4People—An Ethical Framework for a Good AI Society: Opportunities, Risks, Principles, and Recommendations , 2018, Minds and Machines.

[10]  Mariarosaria Taddeo,et al.  How AI can be a force for good , 2018, Science.

[11]  L. Floridi,et al.  Regulate artificial intelligence to avert cyber arms race , 2018, Nature.

[12]  Vijay Kumar,et al.  The grand challenges of Science Robotics , 2018, Science Robotics.

[13]  L. Floridi,et al.  The Ethics of Information , 2013, Dialogue.

[14]  S. Athar Principles of Biomedical Ethics , 2011, The Journal of IMA.

[15]  Matteo Turilli,et al.  Turing’s Imitation Game: Still an Impossible Challenge for All Machines and Some Judges––An Evaluation of the 2008 Loebner Contest , 2008, Minds and Machines.

[16]  John McCarthy,et al.  A Proposal for the Dartmouth Summer Research Project on Artificial Intelligence, August 31, 1955 , 2006, AI Mag..

[17]  A. M. Turing,et al.  Computing Machinery and Intelligence , 1950, The Philosophy of Artificial Intelligence.

[18]  A. Samuel Some Moral and Technical Consequences of Automation—A Refutation , 1960, Science.

[19]  N Wiener,et al.  Some moral and technical consequences of automation , 1960, Science.