Imposing Regulation on Advanced Algorithms
- URL: http://arxiv.org/abs/2005.08092v1
- Date: Sat, 16 May 2020 20:26:54 GMT
- Title: Imposing Regulation on Advanced Algorithms
- Authors: Fotios Fitsilis
- Abstract summary: The book examines universally applicable patterns in administrative decisions and judicial rulings.
It investigates the role and significance of national and indeed supranational regulatory bodies for advanced algorithms.
It considers ENISA, an EU agency that focuses on network and information security, as an interesting candidate for a European regulator of advanced algorithms.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This book discusses the necessity and perhaps urgency for the regulation of
algorithms on which new technologies rely; technologies that have the potential
to re-shape human societies. From commerce and farming to medical care and
education, it is difficult to find any aspect of our lives that will not be
affected by these emerging technologies. At the same time, artificial
intelligence, deep learning, machine learning, cognitive computing, blockchain,
virtual reality and augmented reality, belong to the fields most likely to
affect law and, in particular, administrative law. The book examines
universally applicable patterns in administrative decisions and judicial
rulings. First, similarities and divergence in behavior among the different
cases are identified by analyzing parameters ranging from geographical location
and administrative decisions to judicial reasoning and legal basis. As it turns
out, in several of the cases presented, sources of general law, such as
competition or labor law, are invoked as a legal basis, due to the lack of
current specialized legislation. This book also investigates the role and
significance of national and indeed supranational regulatory bodies for
advanced algorithms and considers ENISA, an EU agency that focuses on network
and information security, as an interesting candidate for a European regulator
of advanced algorithms. Lastly, it discusses the involvement of representative
institutions in algorithmic regulation.
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