Boag Russell J, Strickland Luke, Heathcote Andrew, Neal Andrew, Palada Hector, Loft Shayne
School of Psychological Sciences, University of Western Australia, Crawley, WA 6009, Australia.
Future of Work Institute, Curtin University, Perth, WA 6000, Australia.
Trends Cogn Sci. 2023 Feb;27(2):175-188. doi: 10.1016/j.tics.2022.11.009. Epub 2022 Dec 3.
Evidence accumulation models (EAMs) are a class of computational cognitive model used to understand the latent cognitive processes that underlie human decisions and response times (RTs). They have seen widespread application in cognitive psychology and neuroscience. However, historically, the application of these models was limited to simple decision tasks. Recently, researchers have applied these models to gain insight into the cognitive processes that underlie observed behaviour in applied domains, such as air-traffic control (ATC), driving, forensic and medical image discrimination, and maritime surveillance. Here, we discuss how this modelling approach helps researchers understand how the cognitive system adapts to task demands and interventions, such as task automation. We also discuss future directions and argue for wider adoption of cognitive modelling in Human Factors research.
证据积累模型(EAMs)是一类计算认知模型,用于理解构成人类决策和反应时间(RTs)基础的潜在认知过程。它们在认知心理学和神经科学中得到了广泛应用。然而,从历史上看,这些模型的应用仅限于简单的决策任务。最近,研究人员已将这些模型应用于深入了解应用领域中观察到的行为背后的认知过程,如空中交通管制(ATC)、驾驶、法医和医学图像识别以及海上监视。在此,我们讨论这种建模方法如何帮助研究人员理解认知系统如何适应任务需求和干预措施,如任务自动化。我们还讨论了未来的方向,并主张在人因研究中更广泛地采用认知建模。