分类
字母数字
N2pc
计算机科学
集合(抽象数据类型)
选择性注意
视觉搜索
模式识别(心理学)
模板
可视化快速呈现
感知
认知心理学
语音识别
人工智能
认知
心理学
视觉注意
神经科学
程序设计语言
作者
Alon Zivony,Martin Eimer
摘要
Many models of attention assume that categorization (the individuation of events based on the feature dimension relevant for response selection) occurs only after an object has been selected and encoded in working memory (WM). In contrast, we propose that the match between an item and the currently activated set of possible response features (categorization template) already modulates selective perceptual processing prior to WM encoding. To test this proposal, we measured electrophysiological markers of attentional engagement (N2pc components) and behavioral interference effects from posttarget distractors (PTDs) as a function of whether these distractors matched the categorization template. Participants were presented with rapid serial visual presentations (RSVPs) of digits and letters and had to identify a target indicated by a surrounding shape in these RSVP streams. Targets were drawn from a subset of items within an alphanumeric category. Accuracy was highest when the PTD belonged to the irrelevant alphanumeric category, lower when the PTD matched the target's alphanumeric category but not the categorization template, and lowest when the PTD matched the categorization template. On trials with template-matching PTDs, target-elicited N2pc components were temporally extended, indicative of additional attentional amplification triggered by these PTDs. We propose that this amplification produces increased competition between targets and PTDs, resulting in performance costs. These results provide new evidence for the continuous nature of evidence accumulation and attentional modulations during perceptual processing. They show that attentional selectivity is not exclusively mediated by search templates, but that categorization templates also play an important and often overlooked role. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
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