From Automation to Autonomous Systems: A Legal Phenomenology with Problems of Accountability

Authors: Ugo Pagallo

IJCAI 2017 | Conference PDF | Archive PDF | Plain Text | LLM Run Details

Reproducibility Variable Result LLM Response
Research Type Theoretical The paper offers a concise phenomenology on how automation and the development of artificial intelligence ('AI')systems have affected pillars of the law.
Researcher Affiliation Academia Ugo Pagallo University of Turin, Italy, Law School ugo.pagallo@unito.it
Pseudocode No The paper, being a legal phenomenology, does not contain any pseudocode or algorithm blocks.
Open Source Code No This is a theoretical research paper focusing on legal aspects of AI and does not describe a software methodology, therefore, it does not provide open-source code.
Open Datasets No This is a theoretical research paper and does not involve empirical data or model training, thus no dataset is mentioned for public access or training.
Dataset Splits No This is a theoretical research paper and does not involve empirical data analysis or model validation, thus no training/test/validation dataset splits are specified.
Hardware Specification No This is a theoretical research paper focusing on legal analysis and does not involve experimental work requiring hardware specifications.
Software Dependencies No This is a theoretical research paper and does not involve computational experiments that would require detailing software dependencies with version numbers.
Experiment Setup No This is a theoretical research paper and does not involve experimental setup details such as hyperparameters or training configurations.