Acceso abierto

A study of innovations in legal governance with respect to the safety of artificial intelligence

   | 29 nov 2023

Cite

Alic, D. (2021). The role of data protection and cybersecurity regulations in artificial intelligence global governance: a comparative analysis of the european union, the united states, and china regulatory framework. Search in Google Scholar

Shearer, E., Cho, M., & Magnus, D. (2021). Regulatory, social, ethical, and legal issues of artificial intelligence in medicine. Artificial Intelligence in Medicine. Search in Google Scholar

Caroline, J., James, T., & Wyatt, J. C. (2023). Artificial intelligence and clinical decision support: clinicians’ perspectives on trust, trustworthiness, and liability. Medical Law Review. Search in Google Scholar

Fritz, Z. (2022). When the frameworks don’t work: data protection, trust and artificial intelligence. Journal of medical ethics, 48(4), 213-214. Search in Google Scholar

Bilgic, E., Gorgy, A., Young, M., Abbasgholizadeh-Rahimi, S., & Harley, J. M. (2022). Artificial intelligence in surgical education: considerations for interdisciplinary collaborations:. Surgical Innovation, 29(2), 137-138. Search in Google Scholar

Afridi, Y. S., Ahmad, K., & Hassan, L. (2021). Artificial intelligence based prognostic maintenance of renewable energy systems: a review of techniques, challenges, and future research directions. International Journal of Energy Research(2). Search in Google Scholar

An, N., & Wang, X. (2021). Legal protection of artificial intelligence data and algorithms from the perspective of internet of things resource sharing. Wireless Communications and Mobile Computing, 2021(2), 1-10. Search in Google Scholar

Ronquillo, C. E., Peltonen, L. M., Pruinelli, L., Chu, C. H., Bakken, S., & Beduschi, A., et al. (2021). Artificial intelligence in nursing: priorities and opportunities from an international invitational think-tank of the nursing and artificial intelligence leadership collaborative. Journal of Advanced Nursing(9). Search in Google Scholar

Spanjol, J., & Noble, C. H. (2023). From the editors: engaging with generative artificial intelligence technologies in innovation management research—some answers and more questions. Journal of Product Innovation Management, 40(4), 383-390. Search in Google Scholar

Ho, J. H., Lee, G. G., & Lu, M. T. (2020). Exploring the implementation of a legal ai bot for sustainable development in legal advisory institutions. Sustainability, 12(15), 5991. Search in Google Scholar

Van Dijk, N., Casiraghi, S., & Gutwirth, S. (2021). The ‘ethification’ of ict governance. artificial intelligence and data protection in the european union. Computer Law & Security Review: the international journal of technology law and practice(Nov.), 43. Search in Google Scholar

Zhang, B., Anderljung, M., Kahn, L., Dreksler, N., & Dafoe, A. (2021). Ethics and governance of artificial intelligence: evidence from a survey of machine learning researchers. Journal of Artificial Intelligence Research, 71. Search in Google Scholar

Janssen, M., Brous, P., Estevez, E., Barbosa, L. S., & Janowski, T. (2020). Data governance: organizing data for trustworthy artificial intelligence. Government Information Quarterly, 101493. Search in Google Scholar

Yee, D. H., & You, Y. Y. (2020). The Impact of Awareness of New Artificial Intelligence Technologies on Policy Governance on Risk. Search in Google Scholar

Grassi, A., & Vallati, M. (2021). An exploratory study on the use of artificial intelligence to initiate legal understanding for business development. Journal of Applied Logic, 8(4), 1065-1082. Search in Google Scholar

Qichun, Yang, Xuesong, Zhang, James, & E., et al. (2019). Artificial intelligence and accountability: a multinational legal perspective. Environmental Pollution. Search in Google Scholar

Jia, Y., & Gu, H. (2019). Sample entropy combined with the k-means clustering algorithm reveals six functional networks of the brain. Entropy, 21(12), 1156. Search in Google Scholar

Qin, X., Li, J., Hu, W., & Yang, J. (2020). Machine learning k-means clustering algorithm for interpolative separable density fitting to accelerate hybrid functional calculations with numerical atomic orbitals. The Journal of Physical Chemistry A, 124(48), 10066-10074. Search in Google Scholar

Tal, G. (2015). Dendextend: an r package for visualizing, adjusting and comparing trees of hierarchical clustering. Bioinformatics(22), 3718-3720. Search in Google Scholar

Nunez-Iglesias, J., Kennedy, R., Parag, T., Shi, J., & Chklovskii, D. B. (2013). Machine learning of hierarchical clustering to segment 2d and 3d images. PLoS ONE, 8(8), e71715. Search in Google Scholar

Envelope, H. J. A. (2022). Impact of information security on continuance intention of artificial intelligence assistant. Procedia Computer Science, 204, 768-774. Search in Google Scholar

Liu, Q., Wang, G., Hu, J., & Wu, J. (2022). Preface of special issue on artificial intelligence: the security & privacy opportunities and challenges for emerging applications. Future Generation Computer Systems, 133, 169-170. Search in Google Scholar

eISSN:
2444-8656
Idioma:
Inglés
Calendario de la edición:
Volume Open
Temas de la revista:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics