Switch to: References

Add citations

You must login to add citations.
  1. Measuring coherence with Bayesian networks.Alicja Kowalewska & Rafal Urbaniak - 2023 - Artificial Intelligence and Law 31 (2):369-395.
    When we talk about the coherence of a story, we seem to think of how well its individual pieces fit together—how to explicate this notion formally, though? We develop a Bayesian network based coherence measure with implementation in _R_, which performs better than its purely probabilistic predecessors. The novelty is that by paying attention to the network structure, we avoid simply taking mean confirmation scores between all possible pairs of subsets of a narration. Moreover, we assign special importance to the (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Artificial intelligence as law. [REVIEW]Bart Verheij - 2020 - Artificial Intelligence and Law 28 (2):181-206.
    Information technology is so ubiquitous and AI’s progress so inspiring that also legal professionals experience its benefits and have high expectations. At the same time, the powers of AI have been rising so strongly that it is no longer obvious that AI applications (whether in the law or elsewhere) help promoting a good society; in fact they are sometimes harmful. Hence many argue that safeguards are needed for AI to be trustworthy, social, responsible, humane, ethical. In short: AI should be (...)
    Download  
     
    Export citation  
     
    Bookmark   9 citations  
  • Modelling competing legal arguments using Bayesian model comparison and averaging.Martin Neil, Norman Fenton, David Lagnado & Richard David Gill - 2019 - Artificial Intelligence and Law 27 (4):403-430.
    Bayesian models of legal arguments generally aim to produce a single integrated model, combining each of the legal arguments under consideration. This combined approach implicitly assumes that variables and their relationships can be represented without any contradiction or misalignment, and in a way that makes sense with respect to the competing argument narratives. This paper describes a novel approach to compare and ‘average’ Bayesian models of legal arguments that have been built independently and with no attempt to make them consistent (...)
    Download  
     
    Export citation  
     
    Bookmark   6 citations  
  • Evidential Reasoning.Marcello Di Bello & Bart Verheij - 2011 - In G. Bongiovanni, Don Postema, A. Rotolo, G. Sartor, C. Valentini & D. Walton (eds.), Handbook in Legal Reasoning and Argumentation. Dordrecht, Netherland: Springer. pp. 447-493.
    The primary aim of this chapter is to explain the nature of evidential reasoning, the characteristic difficulties encountered, and the tools to address these difficulties. Our focus is on evidential reasoning in criminal cases. There is an extensive scholarly literature on these topics, and it is a secondary aim of the chapter to provide readers the means to find their way in historical and ongoing debates.
    Download  
     
    Export citation  
     
    Bookmark   4 citations  
  • Proof with and without probabilities.Bart Verheij - 2017 - Artificial Intelligence and Law 25 (1):127-154.
    Evidential reasoning is hard, and errors can lead to miscarriages of justice with serious consequences. Analytic methods for the correct handling of evidence come in different styles, typically focusing on one of three tools: arguments, scenarios or probabilities. Recent research used Bayesian networks for connecting arguments, scenarios, and probabilities. Well-known issues with Bayesian networks were encountered: More numbers are needed than are available, and there is a risk of misinterpretation of the graph underlying the Bayesian network, for instance as a (...)
    Download  
     
    Export citation  
     
    Bookmark   15 citations  
  • Causal models versus reason models in Bayesian networks for legal evidence.Eivind Kolflaath & Christian Dahlman - 2022 - Synthese 200 (6).
    In this paper we compare causal models with reason models in the construction of Bayesian networks for legal evidence. In causal models, arrows in the network are drawn from causes to effects. In a reason model, the arrows are instead drawn towards the evidence, from factum probandum to factum probans. We explore the differences between causal models and reason models and observe several distinct advantages with reason models. Reason models are better aligned with the philosophy of Bayesian inference, as they (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • On computable numbers with an application to the AlanTuringproblem.C. F. Huws & J. C. Finnis - 2017 - Artificial Intelligence and Law 25 (2):181-203.
    This paper explores the question of whether or not the law is a computable number in the sense described by Alan Turing in his 1937 paper ‘On computable numbers with an application to the Entscheidungsproblem.’ Drawing upon the legal, social, and political context of Alan Turing’s own involvement with the law following his arrest in 1952 for the criminal offence of gross indecency, the article explores the parameters of computability within the law and analyses the applicability of Turing’s computability thesis (...)
    Download  
     
    Export citation  
     
    Bookmark  
  • Explanation in AI and law: Past, present and future.Katie Atkinson, Trevor Bench-Capon & Danushka Bollegala - 2020 - Artificial Intelligence 289 (C):103387.
    Download  
     
    Export citation  
     
    Bookmark   7 citations  
  • ICAIL Doctoral Consortium, Montreal 2019.Michał Araszkiewicz, Ilaria Angela Amantea, Saurabh Chakravarty, Robert van Doesburg, Maria Dymitruk, Marie Garin, Leilani Gilpin, Daphne Odekerken & Seyedeh Sajedeh Salehi - 2020 - Artificial Intelligence and Law 28 (2):267-280.
    This is a report on the Doctoral Consortium co-located with the 17th International Conference on Artificial Intelligence and Law in Montreal.
    Download  
     
    Export citation  
     
    Bookmark  
  • Analyzing the Simonshaven Case With and Without Probabilities.Bart Verheij - 2020 - Topics in Cognitive Science 12 (4):1175-1199.
    This paper is one in a series of rational analyses of the Dutch Simonshaven case, each using a different theoretical perspective. The theoretical perspectives discussed in the literature typically use arguments, scenarios, and probabilities, in various combinations. The theoretical perspective on evidential reasoning used in this paper has been designed to connect arguments, scenarios, and probabilities in a single formal modeling approach, in an attempt to investigate bridges between qualitative and quantitative analytic styles. The theoretical perspective uses the recently proposed (...)
    Download  
     
    Export citation  
     
    Bookmark   4 citations  
  • Narration in judiciary fact-finding: a probabilistic explication.Rafal Urbaniak - 2018 - Artificial Intelligence and Law 26 (4):345-376.
    Legal probabilism is the view that juridical fact-finding should be modeled using Bayesian methods. One of the alternatives to it is the narration view, according to which instead we should conceptualize the process in terms of competing narrations of what happened. The goal of this paper is to develop a reconciliatory account, on which the narration view is construed from the Bayesian perspective within the framework of formal Bayesian epistemology.
    Download  
     
    Export citation  
     
    Bookmark   9 citations  
  • Thirty years of Artificial Intelligence and Law: overviews.Michał Araszkiewicz, Trevor Bench-Capon, Enrico Francesconi, Marc Lauritsen & Antonino Rotolo - 2022 - Artificial Intelligence and Law 30 (4):593-610.
    The first issue of _Artificial Intelligence and Law_ journal was published in 1992. This paper discusses several topics that relate more naturally to groups of papers than a single paper published in the journal: ontologies, reasoning about evidence, the various contributions of Douglas Walton, and the practical application of the techniques of AI and Law.
    Download  
     
    Export citation  
     
    Bookmark   1 citation  
  • Editors' Review and Introduction: Models of Rational Proof in Criminal Law.Henry Prakken, Floris Bex & Anne Ruth Mackor - 2020 - Topics in Cognitive Science 12 (4):1053-1067.
    Decisions concerning proof of facts in criminal law must be rational because of what is at stake, but the decision‐making process must also be cognitively feasible because of cognitive limitations, and it must obey the relevant legal–procedural constraints. In this topic three approaches to rational reasoning about evidence in criminal law are compared in light of these demands: arguments, probabilities, and scenarios. This is done in six case studies in which different authors analyze a manslaughter case from different theoretical perspectives, (...)
    Download  
     
    Export citation  
     
    Bookmark   3 citations  
  • A new use case for argumentation support tools: supporting discussions of Bayesian analyses of complex criminal cases.Henry Prakken - 2020 - Artificial Intelligence and Law 28 (1):27-49.
    In this paper a new use case for legal argumentation support tools is considered: supporting discussions about analyses of complex criminal cases with the help of Bayesian probability theory. By way of a case study, two actual discussions between experts in court cases are analysed on their argumentation structure. In this study the usefulness of several recognised argument schemes is confirmed, a new argument scheme for arguments from statistics are proposed, and an analysis is given of debates between experts about (...)
    Download  
     
    Export citation  
     
    Bookmark   1 citation  
  • Analyzing the Simonshaven Case Using Bayesian Networks.Norman Fenton, Martin Neil, Barbaros Yet & David Lagnado - 2020 - Topics in Cognitive Science 12 (4):1092-1114.
    Fenton et al. present a Bayesian‐network analysis of the case, using their previously developed set of building blocks (‘idioms’). They claim that these idioms, combined with their opportunity‐based method for estimating the prior probability of guilt, reduce the subjectivity of their analysis. Although their Bayesian model is less cognitively feasible than scenario‐ or argumentation‐based models, they claim that it does model the standard approach to legal proof, which is to continually revise beliefs under new evidence.
    Download  
     
    Export citation  
     
    Bookmark   3 citations