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'Memory Compression' Effects in Visual Working Memory Are Contingent on Explicit Long-Term Memory

机译:在视觉工作存储器中的“记忆压缩”效果在显式的长期内存上取决于明确的长期内存

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Brady, Konkle, and Alvarez (2009) argued that statistical learning boosts the number of colors that can be held online in visual working memory (WM). They showed that when specific colors are consistently paired together in a WM task, subjects can take optimal advantage of these regularities to recall more colors, an effect they labeled memory compression. They proposed that memory compression is a product of visual statistical learning, an automatic apprehension of statistical regularities that has been shown in prior work to be disconnected from explicit learning. If statistical learning enables an expansion of the number of individuated representations in visual WM, it would require revision of virtually all models of capacity in this online memory system. That said, this provocative claim is inconsistent with multiple studies that have found no improvement in WM performance following numerous repetitions of specific sample displays (e.g., Logie, Brockmole, & Vandenbroucke, 2009; Olson & Jiang, 2004). Here, we replicate the Brady et al. (2009) findings but show that memory compression effects were restricted to subjects who had perfect explicit recall of the color pairs at the end of the study, suggesting that statistical regularities boosted performance by enabling contributions from long- term memory. Thus, while memory compression effects provide an interesting example of the tight collaboration between online and offline memory representations, they do not provide evidence that statistical regularities can augment the number of individuated representations that can be concurrently stored in visual WM.
机译:Brady,Konkle和Alvarez(2009)认为,统计学习提升了可在Visual工作记忆(WM)中在线进行的颜色的数量。他们认为,当特定颜色在WM任务中一致地将它们一起配对时,受试者可以采取最佳的优势这些规则,以回顾更多的颜色,这是它们标记的内存压缩的效果。他们提出内存压缩是视觉统计学习的产品,自动逮捕统计规律的统计规律,这些规则已经从明确学习断开连接。如果统计学习能够扩展Visual WM中的个别表示的数量,则需要在该在线存储系统中修改几乎所有容量模型。也就是说,这种挑衅性索赔与多种研究不一致,这些研究没有在特定样本显示的许多重复之后没有改善WM绩效(例如,Logie,Brockmole,2009年; Olson&Jiang,2004)。在这里,我们复制了Brady等人。 (2009)调查结果但表明内存压缩效应仅限于在研究结束时完全明确召回颜色对的科目,这表明统计规则通过从长期记忆中实现贡献来提升性能。因此,虽然内存压缩效果提供了在线和离线存储器表示之间的紧密协作的有趣示例,但它们不提供证据表明统计规则可以增加可以在Visual WM中兼容地存储的分类表示的数量。

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