Near knowledge : inductive learning systems in law
Data(s) |
2000
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Resumo |
Induction is an interesting model of legal reasoning, since it provides a method of capturing initial states of legal principles and rules, and adjusting these principles and rules over time as the law changes. In this article I explain how Artificial Intelligence-based inductive learning algorithms work, and show how they have been used in law to model legal domains. I identify some problems with implementations undertaken in law to date, and create a taxonomy of appropriate cases to use in legal inductive inferencing systems. I suggest that inductive learning algorithms have potential in modeling law, but that the artificial intelligence implementations to date are problematic. I argue that induction should be further investigated, since it has the potential to be an extremely useful mechanism for understanding legal domains. |
Identificador | |
Publicador |
University of Virginia * School of Law |
Relação |
http://papers.ssrn.com/sol3/papers.cfm?abstract_id=239742 Hunter, Dan (2000) Near knowledge : inductive learning systems in law. Virginia Journal of Law and Technology, 5(9), pp. 1522-1687. |
Direitos |
Copyright 2000 University of Virginia * School of Law |
Fonte |
Faculty of Law; School of Law |
Tipo |
Journal Article |