The opportunity prior: a simple and practical solution to the prior probability problem for legal cases

N. Fenton, D. Lagnado, Christian Dahlman, M. Neil
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引用次数: 6

Abstract

One of the greatest impediments to the use of probabilistic reasoning in legal arguments is the difficulty in agreeing on an appropriate prior probability for the ultimate hypothesis, (in criminal cases this is normally "Defendant is guilty of the crime for which he/she is accused"). Even strong supporters of a Bayesian approach prefer to ignore priors and focus instead on considering only the likelihood ratio (LR) of the evidence. But the LR still requires the decision maker (be it a judge or juror during trial, or anybody helping to determine beforehand whether a case should proceed to trial) to consider their own prior; without it the LR has limited value. We show that, in a large class of cases, it is possible to arrive at a realistic prior that is also as consistent as possible with the legal notion of 'innocent until proven guilty'. The approach can be considered as a formalisation of the 'island problem' whereby if it is known the crime took place on an island when n people were present, then each of the people on the island has an equal prior probability 1/n of having carried out the crime. Our prior is based on simple location and time parameters that determine both a) the crime scene/time (within which it is certain the crime took place) and b) the extended crime scene/time which is the 'smallest' within which it is certain the suspect was known to have been 'closest' in location/time to the crime scene. The method applies to cases where we assume a crime has taken place and that it was committed by one person against one other person (e.g. murder, assault, robbery). The paper considers both the practical and legal implications of the approach. We demonstrate how the opportunity prior probability is naturally incorporated into a generic Bayesian network model that allows us to integrate other evidence about the case.
先验机会:法律案例中先验概率问题的一个简单实用的解决方案
在法律论证中使用概率推理的最大障碍之一是很难就最终假设的适当先验概率达成一致(在刑事案件中,这通常是“被告犯有他/她被指控的罪行”)。即使是贝叶斯方法的坚定支持者也倾向于忽略先验,而只关注证据的似然比(LR)。但是,法律法规仍然要求决策者(无论是审判期间的法官或陪审员,还是任何帮助事先决定案件是否应进行审判的人)考虑自己的先验;没有它,LR的价值是有限的。我们表明,在一大类案件中,有可能达到一个现实的先验,它也尽可能地与“无罪直到被证明有罪”的法律概念一致。该方法可以被视为“岛屿问题”的形式化,即如果已知犯罪发生在一个岛上,当时有n人在场,那么岛上的每个人都有相同的先验概率1/n实施犯罪。我们的先验是基于简单的地点和时间参数,这些参数确定a)犯罪现场/时间(确定犯罪发生的时间)和b)延长的犯罪现场/时间,这是确定嫌疑人在地点/时间上距离犯罪现场“最近”的“最小”时间。该方法适用于我们假设犯罪已经发生,并且是由一个人对另一个人犯下的案件(例如谋杀、袭击、抢劫)。本文考虑了该方法的实际和法律含义。我们演示了如何将机会先验概率自然地纳入通用贝叶斯网络模型,该模型允许我们整合有关案例的其他证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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