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Using neural distance to predict reaction time for categorizing the animacy, shape, and abstract properties of objects

机译:使用神经距离来预测对对象的动画,形状和抽象属性进行分类的反应时间

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A large number of neuroimaging studies have shown that information about object category can be decoded from regions of the ventral visual pathway. One question is how this information might be functionally exploited in the brain. In an attempt to help answer this question, some studies have adopted a neural distance-to-bound approach, and shown that distance to a classifier decision boundary through neural activation space can be used to predict reaction times (RT) on animacy categorization tasks. However, these experiments have not controlled for possible visual confounds, such as shape, in their stimulus design. In the present study we sought to determine whether, when animacy and shape properties are orthogonal, neural distance in low- and high-level visual cortex would predict categorization RTs, and whether a combination of animacy and shape distance might predict RTs when categories crisscrossed the two stimulus dimensions, and so were not linearly separable. In line with previous results, we found that RTs correlated with neural distance, but only for animate stimuli, with similar, though weaker, asymmetric effects for the shape and crisscrossing tasks. Taken together, these results suggest there is potential to expand the neural distance-to-bound approach to other divisions beyond animacy and object category.
机译:大量的神经影像学研究表明,关于对象类别的信息可以从腹侧视觉途径的区域解码。一个问题是该信息如何在大脑中可以在功能上被剥削。为了帮助回答这个问题,一些研究采用了神经距离对方法,并且示出了通过神经激活空间的距离来通过神经激活空间来预测动画分类任务上的反应时间(RT)。然而,这些实验没有控制在刺激设计中可能的视觉混淆,例如形状。在本研究中,我们寻求确定当动画和形状属性是正交的时,低级别的视觉皮层的神经距离会预测分类RTS,以及动画和形状距离的组合是否可以预测RTS,当类别acrossed时两个刺激尺寸,所以没有线性可分离。符合以前的结果,我们发现RTS与神经距离相关,但仅用于动画刺激,具有相似的,虽然较弱,但形状的不对称效果和粗糙的任务。总之,这些结果表明存在潜力扩展到超出动画和对象类别的其他划分的神经距离接近。

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