A Bayesian model of legal syllogistic reasoning

Artificial Intelligence and Law:1-22 (forthcoming)
  Copy   BIBTEX

Abstract

Bayesian approaches to legal reasoning propose causal models of the relation between evidence, the credibility of evidence, and ultimate hypotheses, or verdicts. They assume that legal reasoning is the process whereby one infers the posterior probability of a verdict based on observed evidence, or facts. In practice, legal reasoning does not operate quite that way. Legal reasoning is also an attempt at inferring applicable rules derived from legal precedents or statutes based on the facts at hand. To make such an inference, legal reasoning follows syllogistic logic and first order transitivity. This paper proposes a Bayesian model of legal syllogistic reasoning that complements existing Bayesian models of legal reasoning using a Bayesian network whose variables correspond to legal precedents, statutes, and facts. We suggest that legal reasoning should be modelled as a process of finding the posterior probability of precedents and statutes based on available facts.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 91,881

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Instructions for Authors.[author unknown] - 2002 - Artificial Intelligence and Law 10 (4):303-308.
Instructions for Authors.[author unknown] - 2002 - Artificial Intelligence and Law 10 (1):219-224.
Instructions for Authors.[author unknown] - 2001 - Artificial Intelligence and Law 9 (4):315-320.
Index of Key Words.[author unknown] - 1997 - Artificial Intelligence and Law 5 (4):347-347.
Instructions for Authors.[author unknown] - 2004 - Artificial Intelligence and Law 12 (4):447-452.
Measuring coherence with Bayesian networks.Alicja Kowalewska & Rafal Urbaniak - 2023 - Artificial Intelligence and Law 31 (2):369-395.

Analytics

Added to PP
2023-04-25

Downloads
20 (#767,424)

6 months
12 (#213,779)

Historical graph of downloads
How can I increase my downloads?

Author's Profile

Axel Constant
University of Sussex

Citations of this work

No citations found.

Add more citations