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首页> 外文期刊>Cognitive Psychology >The attention-weighted sample-size model of visual short-term memory: Attention capture predicts resource allocation and memory load
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The attention-weighted sample-size model of visual short-term memory: Attention capture predicts resource allocation and memory load

机译:视觉短期记忆的注意力加权样本大小模型:注意力捕获可预测资源分配和内存负载

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We investigated the capacity of visual short-term memory (VSTM) in a phase discrimination task that required judgments about the configural relations between pairs of black and white features. Sewell et al. (2014) previously showed that VSTM capacity in an orientation discrimination task was well described by a sample size model, which views VSTM as a resource comprised of a finite number of noisy stimulus samples. The model predicts the invariance of Sigma(i)(d'(i))(2), the sum of squared sensitivities across items, for displays of different sizes. For phase discrimination, the set-size effect significantly exceeded that predicted by the sample-size model for both simultaneously and sequentially presented stimuli. Instead, the set-size effect and the serial position curves with sequential presentation were predicted by an attention-weighted version of the sample-size model, which assumes that one of the items in the display captures attention and receives a disproportionate share of resources. The choice probabilities and response time distributions from the task were well described by a diffusion decision model in which the drift rates embodied the assumptions of the attention-weighted sample-size model. (C) 2016 The Authors. Published by Elsevier Inc.
机译:我们调查了相位判别任务中视觉短时记忆(VSTM)的能力,该任务需要判断黑白特征对之间的配置关系。 Sewell等。 (2014年)以前表明,通过样本大小模型可以很好地描述VSTM在定向歧视任务中的能力,该模型将VSTM视为由有限数量的嘈杂刺激样本组成的资源。该模型可预测Sigma(i)(d'(i))(2)的不变性,即不同尺寸显示的项目间灵敏度的平方和。对于相位鉴别,对于同时和顺序出现的刺激,设定大小的效果明显超过了样本大小模型所预测的效果。取而代之的是,通过样本大小模型的注意力加权版本来预测具有顺序呈现的集合大小效应和序列位置曲线,该模型假定显示器中的一项吸引了注意力并获得了不成比例的资源份额。任务的选择概率和响应时间分布由扩散决策模型很好地描述,其中漂移率体现了注意力加权样本量模型的假设。 (C)2016作者。由Elsevier Inc.发布

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