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首页> 外文期刊>Journal of vision >Variations in mnemonic resolution across set sizes support discrete resource models of capacity in working memory
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Variations in mnemonic resolution across set sizes support discrete resource models of capacity in working memory

机译:跨集合尺寸的助记度分辨率的变化支持工作存储器中的分立资源模型

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Discrete resource models propose that WM capacity is determined by a small number of discrete a??slotsa?? that share a limited pool of resources. By contrast, flexible resource models posit a single resource pool that can be allocated across an unlimited number of items. To test these models, we measured mnemonic resolution for orientation as a function of set size (1a??8). Using a mixture model consistent with discrete resource models (Zhang and Luck, 2008), we estimated number (Pmem) and resolution (SD) as a function of set size. To test the flexible resource model, we fitted a single Gaussian distribution to the distribution of recall errors to operationalize WM capacity. Although both models predict worse mnemonic resolution for larger set sizes, the discrete resource model predicts that resolution should reach an asymptote when capacity has been achieved because items that are not stored should not affect the precision of the stored representations. In line with this hypothesis, the group data revealed a clear asymptote in resolution at set size 4. Critically, we also found that observers with fewer a??slotsa?? reached asymptote at smaller set sizes, leading to a strong correlation between individual slot estimates and the set size at which mnemonic resolution reached asymptote. By contrast, capacity estimates based on the assumptions of the flexible resource model were significantly worse at predicting resolution as a function of set size. Thus, discrete resource models provide superior predictive validity for understanding the relationship between resolution and set size in visual WM.
机译:离散资源模型提出了通过少量离散的Alotsa确定WM容量??这分享了有限的资源池。相比之下,灵活的资源模型分配一个可以在无限数量的项目中分配的单个资源池。为了测试这些模型,我们测量了作为设定尺寸的函数的定向的助记度分辨率(1A ?? 8)。使用与离散资源模型(Zhang and Wark,2008)的混合模型,我们估计数量(PMEM)和分辨率(SD)作为设定大小的函数。要测试灵活资源模型,我们将单个高斯分发拟合到召回错误的分布,以运行WM容量。虽然两个模型都预测了更差的Mnemonic分辨率,但是对于较大的设定尺寸,离散资源模型预测,当已经实现容量时,分辨率应该达到渐近,因为未存储的项目不应影响所存储的表示的精度。符合这一假设,群组数据在集规尺寸4的分辨率下揭示了透明的渐近4.批判性地,我们也发现观察者的斜坡少?以较小的尺寸达到渐近的渐近,导致各个插槽估计与助记符分辨率达到渐近的集合大小之间的强烈相关性。相比之下,基于灵活资源模型的假设的容量估计在预测分辨率时显着更差,作为设定大小的函数。因此,离散资源模型提供了卓越的预测有效性,以了解Visual WM中分辨率和设置大小之间的关系。

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