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Multidimensional signal detection decision models of the uncertainty task: Application to face perception

机译:不确定性任务的多维信号检测决策模型:应用于面部感知

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The uncertainty paradigm has been used in vision research to evaluate whether stimulus components are processed independently or not. The paradigm consists of several experimental conditions from which sensitivity indices are estimated and combined to provide evidence for or against the independence of stimulus components in perception. In typical applications, a multicomponent stimulus differs in one of its components from a standard value and the observer needs to decide if the change is an increment or decrement. In the certainty condition, the observer knows which component will contain the change; in the uncertainty condition, the component that differs from standard is unknown. Performance across the two conditions can be compared to that which is predicted by independence of components. The mathematical foundations upon which performance indices are related to component independence have been inadequately examined in previous applications and we clarify many of these concepts here. We derive predictions for observer sensitivity in the uncertainty condition and a relative measure, root-mean-square (RMS) that incorporates both uncertainty and certainty performance for three major decision models using a signal detection theory framework: a distance-classifier, the optimal decision model, and a decisionally separable ("independent" decisions) strategy. We also consider, using these decision models, implications for sensitivity and RMS when stimulus components are perceptually correlated. We present data from an experiment involving the perception of facial features in order to demonstrate how to apply the theoretical results. (C) 2015 Elsevier Inc. All rights reserved.
机译:不确定性范式已用于视觉研究中,以评估刺激成分是否独立处理。该范式由几个实验条件组成,从中可以估算并结合敏感度指数,以提供支持或反对感知中刺激成分独立性的证据。在典型的应用中,多成分刺激的成分之一与标准值不同,观察者需要确定变化是增加还是减少。在确定性条件下,观察者知道哪个组件将包含更改。在不确定性条件下,与标准不同的组件是未知的。可以将这两个条件下的性能与组件独立性所预测的性能进行比较。在以前的应用中,性能指标与组件独立性相关的数学基础尚未得到充分研究,我们在这里阐明了许多概念。我们使用信号检测理论框架得出以下三种主要决策模型的不确定性条件下观察者灵敏度的预测,以及相对度量均方根(RMS),该方法结合了不确定性和确定性性能:距离分类器,最优决策模型,以及决策上可分离的(“独立”决策)策略。当刺激成分在感知上相关时,我们还考虑使用这些决策模型对灵敏度和RMS的影响。我们从涉及面部特征感知的实验中提供数据,以证明如何应用理论结果。 (C)2015 Elsevier Inc.保留所有权利。

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