Data-centric and logic-based models for automated legal problem solving

Artificial Intelligence and Law 25 (1):5-27 (2017)
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Abstract

Logic-based approaches to legal problem solving model the rule-governed nature of legal argumentation, justification, and other legal discourse but suffer from two key obstacles: the absence of efficient, scalable techniques for creating authoritative representations of legal texts as logical expressions; and the difficulty of evaluating legal terms and concepts in terms of the language of ordinary discourse. Data-centric techniques can be used to finesse the challenges of formalizing legal rules and matching legal predicates with the language of ordinary parlance by exploiting knowledge latent in legal corpora. However, these techniques typically are opaque and unable to support the rule-governed discourse needed for persuasive argumentation and justification. This paper distinguishes representative legal tasks to which each approach appears to be particularly well suited and proposes a hybrid model that exploits the complementarity of each.

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References found in this work

Argumentation mining.Raquel Mochales & Marie-Francine Moens - 2011 - Artificial Intelligence and Law 19 (1):1-22.
AI & Law, Logic and Argument Schemes.Henry Prakken - 2005 - Argumentation 19 (3):303-320.
Isomorphism and legal knowledge based systems.T. J. M. Bench-Capon & F. P. Coenen - 1992 - Artificial Intelligence and Law 1 (1):65-86.
Automated patent landscaping.Aaron Abood & Dave Feltenberger - 2018 - Artificial Intelligence and Law 26 (2):103-125.

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