Suppr超能文献

显著性和集合大小在整体平均中的作用。

Roles of saliency and set size in ensemble averaging.

作者信息

Iakovlev Aleksei U, Utochkin Igor S

机构信息

Psychology Department, HSE University, 4-2, Armyansky per., Moscow, Russia, 101000.

出版信息

Atten Percept Psychophys. 2021 Apr;83(3):1251-1262. doi: 10.3758/s13414-020-02089-w.

Abstract

Ensemble statistics are often thought of as a reliable impression of numerous items despite limited capacities to consciously represent each individual. However, whether all items equally contribute to ensemble summaries (e.g., mean) and whether they might be affected by known limited-capacity processes, such as focused attention, is still debated. We addressed these questions via a recently described "amplification effect," a systematic bias of perceived mean (e.g., average size) towards the more salient "tail" of a feature distribution (e.g., larger items). In our experiments, observers adjusted the mean orientation of sets of items varying in set size. We made some of the items more salient or less salient by changing their size. While the whole orientation distribution was fixed, the more salient subset could be shifted relative to the set mean or differ in range. We measured the bias away from the set mean and the standard deviation (SD) of errors, as it is known to reflect the physical range from which ensemble information is sampled. We found that bias and SD changes followed the shifts and range changes in salient subsets, providing evidence for amplification. However, these changes were weaker than those expected from sampling only salient items, suggesting that less salient items were also sampled. Importantly, the SD decreased as a function of set size, which is only possible if the number of sampled elements increased with set size. Overall, we conclude that orientation summary statistics are sampled from an entire ensemble and modulated by the amplification effect of attention.

摘要

尽管有意识地表征每个个体的能力有限,但总体统计通常被认为是对众多项目的可靠印象。然而,所有项目是否对总体摘要(例如均值)有同等贡献,以及它们是否可能受到已知的有限容量过程(如集中注意力)的影响,仍存在争议。我们通过最近描述的“放大效应”来解决这些问题,“放大效应”是指感知均值(例如平均大小)朝着特征分布中更突出的“尾部”(例如较大项目)的系统偏差。在我们的实验中,观察者调整了不同集合大小的项目集的平均方向。我们通过改变一些项目的大小使其更突出或不那么突出。虽然整个方向分布是固定的,但更突出的子集可以相对于集合均值移动或范围不同。我们测量了偏离集合均值的偏差和误差的标准差(SD),因为已知它反映了从中采样总体信息的物理范围。我们发现偏差和标准差的变化跟随突出子集中的移动和范围变化,为放大效应提供了证据。然而,这些变化比仅对突出项目进行采样所预期的要弱,这表明也对不太突出的项目进行了采样。重要的是,标准差随着集合大小的增加而减小,只有当采样元素的数量随着集合大小增加时才有可能。总体而言,我们得出结论,方向摘要统计是从整个总体中采样的,并受到注意力放大效应的调节。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验