Biedermann Alex, Vuille Joëlle, Taroni Franco
School of Criminal Justice, Institute of Forensic Science, University of Lausanne, Lausanne, 1015, Switzerland.
Investig Genet. 2012 Aug 1;3(1):16. doi: 10.1186/2041-2223-3-16.
The 'database search problem', that is, the strengthening of a case - in terms of probative value - against an individual who is found as a result of a database search, has been approached during the last two decades with substantial mathematical analyses, accompanied by lively debate and centrally opposing conclusions. This represents a challenging obstacle in teaching but also hinders a balanced and coherent discussion of the topic within the wider scientific and legal community. This paper revisits and tracks the associated mathematical analyses in terms of Bayesian networks. Their derivation and discussion for capturing probabilistic arguments that explain the database search problem are outlined in detail. The resulting Bayesian networks offer a distinct view on the main debated issues, along with further clarity.
As a general framework for representing and analyzing formal arguments in probabilistic reasoning about uncertain target propositions (that is, whether or not a given individual is the source of a crime stain), this paper relies on graphical probability models, in particular, Bayesian networks. This graphical probability modeling approach is used to capture, within a single model, a series of key variables, such as the number of individuals in a database, the size of the population of potential crime stain sources, and the rarity of the corresponding analytical characteristics in a relevant population.
This paper demonstrates the feasibility of deriving Bayesian network structures for analyzing, representing, and tracking the database search problem. The output of the proposed models can be shown to agree with existing but exclusively formulaic approaches.
The proposed Bayesian networks allow one to capture and analyze the currently most well-supported but reputedly counter-intuitive and difficult solution to the database search problem in a way that goes beyond the traditional, purely formulaic expressions. The method's graphical environment, along with its computational and probabilistic architectures, represents a rich package that offers analysts and discussants with additional modes of interaction, concise representation, and coherent communication.
“数据库搜索问题”,即从证明力角度强化针对因数据库搜索而被找到的个人的案件,在过去二十年中已通过大量数学分析来探讨,同时伴随着激烈的辩论和截然相反的结论。这在教学中是一个具有挑战性的障碍,也阻碍了在更广泛的科学和法律界对该主题进行平衡且连贯的讨论。本文从贝叶斯网络的角度重新审视并追踪相关的数学分析。详细概述了用于捕捉解释数据库搜索问题的概率论据的贝叶斯网络的推导和讨论。由此产生的贝叶斯网络为主要的争议问题提供了独特的视角,同时更加清晰明了。
作为在关于不确定目标命题(即给定个体是否为犯罪污渍来源)的概率推理中表示和分析形式论据的一般框架,本文依赖于图形概率模型,特别是贝叶斯网络。这种图形概率建模方法用于在单个模型中捕捉一系列关键变量,例如数据库中的个体数量、潜在犯罪污渍来源群体的规模以及相关群体中相应分析特征的稀有性。
本文证明了推导用于分析、表示和追踪数据库搜索问题的贝叶斯网络结构的可行性。所提出模型的输出可以证明与现有的但仅为公式化的方法一致。
所提出的贝叶斯网络使人们能够以超越传统纯公式化表达的方式捕捉和分析目前最有充分依据但据称违反直觉且难以解决的数据库搜索问题的解决方案。该方法的图形环境及其计算和概率架构构成了一个丰富的工具包,为分析人员和讨论者提供了额外的交互模式、简洁表示和连贯沟通方式。