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Feature saliency and feedback information interactively impact visual category learning

机译:特征显着性和反馈信息以交互方式影响视觉类别学习

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摘要

Visual category learning (VCL) involves detecting which features are most relevant for categorization. VCL relies on attentional learning, which enables effectively redirecting attention to object’s features most relevant for categorization, while ‘filtering out’ irrelevant features. When features relevant for categorization are not salient, VCL relies also on perceptual learning, which enables becoming more sensitive to subtle yet important differences between objects. Little is known about how attentional learning and perceptual learning interact when VCL relies on both processes at the same time. Here we tested this interaction. Participants performed VCL tasks in which they learned to categorize novel stimuli by detecting the feature dimension relevant for categorization. Tasks varied both in feature saliency (low-saliency tasks that required perceptual learning vs. high-saliency tasks), and in feedback information (tasks with mid-information, moderately ambiguous feedback that increased attentional load, vs. tasks with high-information non-ambiguous feedback). We found that mid-information and high-information feedback were similarly effective for VCL in high-saliency tasks. This suggests that an increased attentional load, associated with the processing of moderately ambiguous feedback, has little effect on VCL when features are salient. In low-saliency tasks, VCL relied on slower perceptual learning; but when the feedback was highly informative participants were able to ultimately attain the same performance as during the high-saliency VCL tasks. However, VCL was significantly compromised in the low-saliency mid-information feedback task. We suggest that such low-saliency mid-information learning scenarios are characterized by a ‘cognitive loop paradox’ where two interdependent learning processes have to take place simultaneously.
机译:视觉类别学习(VCL)涉及检测与分类最相关的功能。 VCL依靠注意力学习,它可以有效地将注意力重定向到与分类最相关的对象特征,同时“过滤掉”不相关的特征。当与分类相关的功能不突出时,VCL还将依赖于感知学习,这使得对对象之间细微但重要的差异变得更加敏感。当VCL同时依赖两个过程时,关于注意力学习和知觉学习如何相互作用的知识鲜为人知。在这里,我们测试了这种交互。参与者执行了VCL任务,他们学会了通过检测与分类相关的特征维来对新刺激进行分类。任务在功能显着性(需要感知学习的低显着性任务与高显着性任务)和反馈信息(具有中等信息的任务,中等歧义的反馈会增加注意力负荷)和具有高信息非任务的任务中有所不同-含糊的反馈)。我们发现,在高显着性任务中,中间信息和高信息反馈对VCL同样有效。这表明当特征突出时,与适度模糊反馈的处理相关的注意力负荷增加对VCL几乎没有影响。在低显着性任务中,VCL依靠较慢的知觉学习。但是当反馈非常有用时,参与者最终可以达到与高显着性VCL任务相同的性能。但是,VCL在低显着性的中间信息反馈任务中受到了严重损害。我们建议,这种低显着性的中等信息学习场景的特征是“认知循环悖论”,其中两个相互依赖的学习过程必须同时进行。

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