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A Varying Role for Abstraction in Models of Category Learning Constructed from Neural Representations in Early Visual Cortex

机译:从早期视觉皮层的神经表示构建分类学习模型中抽象的各种作用

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摘要

The human capacity for visual categorization is core to how we make sense of the visible world. Although a substantive body of research in cognitive neuroscience has localized this capacity to regions of human visual cortex, relatively few studies have investigated the role of abstraction in how representations for novel object categories are constructed from the neural representation of stimulus dimensions. Using human fMRI coupled with formal modeling of observer behavior, we assess a wide range of categorization models that vary in their level of abstraction from collections of subprototypes to representations of individual exemplars. The category learning tasks range from simple linear and unidimensional category rules to complex crisscross rules that require a nonlinear combination of multiple dimensions. We show that models based on neural responses in primary visual cortex favor a variable, but often limited, extent of abstraction in the construction of representations for novel categories, which differ in degree across tasks and individuals.
机译:人类进行视觉分类的能力是我们如何理解可见世界的核心。尽管认知神经科学方面的实质性研究已将这种能力定位于人类视觉皮层区域,但相对较少的研究调查了抽象在如何从刺激维度的神经表示构造新对象类别的表示中的作用。使用人类功能磁共振成像技术与观察者行为的正式建模相结合,我们评估了范围广泛的分类模型,这些分类模型的抽象水平从子原型的集合到单个示例的表示都各不相同。类别学习任务的范围从简单的线性和一维类别规则到复杂的交叉规则,这些规则需要多维的非线性组合。我们显示,基于主要视觉皮层的神经反应的模型在构建新颖类别的表示形式时,倾向于可变但通常是有限的抽象程度,不同任务和个人的程度不同。

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