Tangen Jason M, Kent Kirsty M, Searston Rachel A
School of Psychology, The University of Queensland, St Lucia, 4072, Queensland, Australia.
School of Psychology, The University of Adelaide, Adelaide, 5005, South Australia, Australia.
Cogn Res Princ Implic. 2020 May 19;5(1):23. doi: 10.1186/s41235-020-00223-8.
When a fingerprint is located at a crime scene, a human examiner is counted upon to manually compare this print to those stored in a database. Several experiments have now shown that these professional analysts are highly accurate, but not infallible, much like other fields that involve high-stakes decision-making. One method to offset mistakes in these safety-critical domains is to distribute these important decisions to groups of raters who independently assess the same information. This redundancy in the system allows it to continue operating effectively even in the face of rare and random errors. Here, we extend this "wisdom of crowds" approach to fingerprint analysis by comparing the performance of individuals to crowds of professional analysts. We replicate the previous findings that individual experts greatly outperform individual novices, particularly in their false-positive rate, but they do make mistakes. When we pool the decisions of small groups of experts by selecting the decision of the majority, however, their false-positive rate decreases by up to 8% and their false-negative rate decreases by up to 12%. Pooling the decisions of novices results in a similar drop in false negatives, but increases their false-positive rate by up to 11%. Aggregating people's judgements by selecting the majority decision performs better than selecting the decision of the most confident or the most experienced rater. Our results show that combining independent judgements from small groups of fingerprint analysts can improve their performance and prevent these mistakes from entering courts.
当在犯罪现场发现指纹时,通常依靠人工将该指纹与数据库中存储的指纹进行比对。现在有几项实验表明,这些专业分析人员的准确率很高,但并非万无一失,这与其他涉及高风险决策的领域很相似。在这些对安全至关重要的领域中,抵消错误的一种方法是将这些重要决策分配给一组独立评估相同信息的评估人员。系统中的这种冗余使得即使面对罕见和随机的错误,它也能继续有效运行。在这里,我们通过比较个人与专业分析人员群体的表现,将这种“群体智慧”方法扩展到指纹分析中。我们重复了之前的发现,即个体专家的表现大大优于个体新手,尤其是在误报率方面,但他们确实会犯错。然而,当我们通过选择多数人的决定来汇总小组成员专家的决策时,他们的误报率降低了高达8%,漏报率降低了高达12%。汇总新手的决策会使漏报率有类似的下降,但会使他们的误报率增加高达11%。通过选择多数决定来汇总人们的判断,比选择最自信或最有经验的评估人员的决定表现更好。我们的结果表明,结合小组成员指纹分析人员的独立判断可以提高他们的表现,并防止这些错误进入法庭。