Adolphs Ralph, Nummenmaa Lauri, Todorov Alexander, Haxby James V
Division of the Humanities and Social Sciences, California Institute of Technology, Pasadena, CA, USA
Department of Neuroscience and Biomedical Engineering, School of Science, Aalto University, Espoo, Finland Turku PET Centre and Department of Psychology, University of Turku, Turku, Finland.
Philos Trans R Soc Lond B Biol Sci. 2016 May 5;371(1693). doi: 10.1098/rstb.2015.0367.
The complexity of social perception poses a challenge to traditional approaches to understand its psychological and neurobiological underpinnings. Data-driven methods are particularly well suited to tackling the often high-dimensional nature of stimulus spaces and of neural representations that characterize social perception. Such methods are more exploratory, capitalize on rich and large datasets, and attempt to discover patterns often without strict hypothesis testing. We present four case studies here: behavioural studies on face judgements, two neuroimaging studies of movies, and eyetracking studies in autism. We conclude with suggestions for particular topics that seem ripe for data-driven approaches, as well as caveats and limitations.
社会认知的复杂性对理解其心理和神经生物学基础的传统方法构成了挑战。数据驱动的方法特别适合应对刺激空间和表征社会认知的神经表征通常具有的高维度特性。此类方法更具探索性,利用丰富的大型数据集,并常常在没有严格假设检验的情况下尝试发现模式。我们在此展示四个案例研究:面部判断的行为研究、两项关于电影的神经成像研究以及自闭症的眼动追踪研究。我们最后针对数据驱动方法似乎已成熟适用的特定主题提出建议,以及注意事项和局限性。