TY - BOOK AU - Hirsch,Dennis AU - Bartley,Timothy AU - Chandrasekaran,Aravind AU - Norris,Davon AU - Parthasarathy,Srinivasan AU - Turner,Piers Norris ED - SpringerLink (Online service) TI - Business Data Ethics: Emerging Models for Governing AI and Advanced Analytics T2 - SpringerBriefs in Law, SN - 9783031214912 AV - K4240-4343 U1 - 343,099 23 PY - 2024/// CY - Cham PB - Springer International Publishing, Imprint: Springer KW - Information technology KW - Law and legislation KW - Mass media KW - Private international law KW - Conflict of laws KW - International law KW - Comparative law KW - Artificial intelligence KW - Business ethics KW - Corporate governance KW - IT Law, Media Law, Intellectual Property KW - Private International Law, International and Foreign Law, Comparative Law KW - Artificial Intelligence KW - Business Ethics KW - Corporate Governance N1 - 1. What is AI Ethics Management and Why Does it Matter? -- 2. AI Can Injure People and Damage Business Reputation -- 3. Why Companies Pursue AI Ethics Management -- 4. How to Draw Substantive Lines Between Ethical, and Unethical, Uses of AI -- 5. Management Structures and Processes for Achieving Responsible and Ethical AI -- 6. The Next Stage: AI for the Social Good -- 7. Conclusion; Open Access N2 - This open access book explains how leading business organizations attempt to achieve the responsible and ethical use of artificial intelligence (AI) and other advanced information technologies. These technologies can produce tremendous insights and benefits. But they can also invade privacy, perpetuate bias, and otherwise injure people and society. To use these technologies successfully, organizations need to implement them responsibly and ethically. The question is: how to do this? Data ethics management, and this book, provide some answers. The authors interviewed and surveyed data ethics managers at leading companies. They asked why these experts see data ethics as important and how they seek to achieve it. This book conveys the results of that research on a concise, accessible way. Much of the existing writing on data and AI ethics focuses either on macro-level ethical principles, or on micro-level product design and tooling. The interviews showed that companies need a third component: data ethics management. This third element consists of the management structures, processes, training and substantive benchmarks that companies use to operationalize their high-level ethical principles and to guide and hold accountable their developers. Data ethics management is the connective tissue makes ethical principles real. It is the focus of this book. This book should be of use to organizations that wish to improve their own data ethics management efforts, legislators and policymakers who hope to build on existing management practices, scholars who study beyond compliance business behavior, and members of the public who want to understand better the threats that AI poses and how to reduce them UR - https://doi.org/10.1007/978-3-031-21491-2 ER -