Vincent Benjamin T
School of Psychology, University of Dundee, Dundee, UK,
Atten Percept Psychophys. 2015 May;77(4):1013-32. doi: 10.3758/s13414-014-0830-0. Epub 2015 Feb 27.
Decision making and optimal observer models offer an important theoretical approach to the study of covert selective attention. While their probabilistic formulation allows quantitative comparison to human performance, the models can be complex and their insights are not always immediately apparent. Part 1 establishes the theoretical appeal of the Bayesian approach, and introduces the way in which probabilistic approaches can be applied to covert search paradigms. Part 2 presents novel formulations of Bayesian models of 4 important covert attention paradigms, illustrating optimal observer predictions over a range of experimental manipulations. Graphical model notation is used to present models in an accessible way and Supplementary Code is provided to help bridge the gap between model theory and practical implementation. Part 3 reviews a large body of empirical and modelling evidence showing that many experimental phenomena in the domain of covert selective attention are a set of by-products. These effects emerge as the result of observers conducting Bayesian inference with noisy sensory observations, prior expectations, and knowledge of the generative structure of the stimulus environment.
决策和最优观察者模型为隐蔽选择性注意的研究提供了一种重要的理论方法。虽然它们的概率公式允许与人类表现进行定量比较,但这些模型可能很复杂,其见解并不总是立竿见影。第1部分阐述了贝叶斯方法的理论吸引力,并介绍了概率方法应用于隐蔽搜索范式的方式。第2部分提出了4种重要隐蔽注意范式的贝叶斯模型的新公式,展示了在一系列实验操作中的最优观察者预测。使用图形模型符号以易懂的方式呈现模型,并提供补充代码以帮助弥合模型理论与实际实现之间的差距。第3部分回顾了大量的实证和建模证据,表明隐蔽选择性注意领域中的许多实验现象是一系列副产品。这些效应是观察者对有噪声的感官观察、先验期望和刺激环境生成结构的知识进行贝叶斯推理的结果。