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Artificial Intelligence and Law (2004) 12:227–229 Springer 2004 DOI 10.1007/s10506-004-3889-4 Book Review Bram Roth, Case-based Reasoning in the Law: A Formal Theory of Reasoning by Case Comparison. Ph. D. Thesis, The University of Maastricht, 2003. 181 pp. Modelling how legal cases are reasoned with has been a central concern of AI and Law since its inception. The key line of work originates in the US with the HYPO system of Edwina Rissland and Kevin Ashley, which developed into the CABARET system of Rissland and David Skalak and the CATO system of Ashley and Vincent Aleven, and is currently represented by the Issue-Based Prediction system of Ashley and Steffie Bruninghaus. Other important work from the US includes the work of Karl Branting, especially the GREBE system. In all of this work the emphasis has been on implemented systems. European work, which starts from a more rule and logic orientated perspective, has tended to address this topic by attempting to provide a logical reconstruction of the styles of reasoning exemplified by these systems. Henry Prakken and Giovanni Sartor have explicitly provided a logical model of reasoning with precedents, while Jaap Hage and Bart Verheij have worked on Reason Based Logic
Artificial Intelligence and Law – Springer Journals
Published: Nov 26, 2005
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