Dror Itiel, Rosenthal Robert
School of Psychology, University of Southampton, Southampton, SO17 1BJ, United Kingdom.
J Forensic Sci. 2008 Jul;53(4):900-3. doi: 10.1111/j.1556-4029.2008.00762.x.
In this paper we employ meta-analytic procedures and estimate effect sizes indexing the degree of reliability and biasability of forensic experts. The data are based on within-expert comparisons, whereby the same expert unknowingly makes judgments on the same data at different times. This allows us to take robust measurements and conduct analyses that compare variances within the same experts, and thus to carefully quantify the degree of consistency and objectivity that underlie expert performance and decision making. To achieve consistency, experts must be reliable, at least in the very basic sense that an expert makes the same decision when the same data are presented in the same circumstances, and thus be consistent with themselves. To achieve objectivity, experts must focus only on the data and ignore irrelevant information, and thus be unbiasable by extraneous context. The analyses show that experts are not totally reliable nor are they unbiasable. These findings are based on fingerprint experts decision making, but because this domain is so well established, they apply equally well (if not more) to all other less established forensic domains.
在本文中,我们采用元分析程序,并估计效应大小,以此来衡量法医专家的可靠程度和易受偏差影响的程度。数据基于专家内部比较,即同一位专家在不知情的情况下,于不同时间对相同数据进行判断。这使我们能够进行稳健的测量,并开展比较同一专家内部方差的分析,从而仔细量化专家表现和决策背后的一致性和客观性程度。为实现一致性,专家必须可靠,至少在最基本的意义上,即当相同数据在相同情况下呈现时,专家做出相同的决策,从而保持自身的一致性。为实现客观性,专家必须只关注数据,忽略无关信息,因此不受外部环境的影响而产生偏差。分析表明,专家并非完全可靠,也并非不可受偏差影响。这些发现基于指纹专家的决策,但由于该领域已非常成熟,它们同样(甚至更)适用于所有其他不太成熟的法医领域。