幅度辨别建模:特征维度的内部精确度和注意力权重的影响

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Emily M. Sanford, Chad M. Topaz, Justin Halberda
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引用次数: 0

摘要

面对丰富的环境,我们如何决定使用哪些信息?对单个实体(如一群鸟)的观察会产生许多不同的解释,包括它们的数量、平均大小和空间范围。因此,认知所面临的一个持久挑战就是如何将资源集中在与任何特定决策最相关的证据上。在本研究中,受试者利用相同的刺激集完成了三项任务--数量辨别、表面积辨别和凸壳辨别。因此,在每个任务中,只有相关的特征才能为决策提供一致的证据。这样,我们就能确定人类对每个特征维度的辨别能力,以及他们在辨别时所依赖的证据。我们引入了一种新颖的计算方法,该方法同时适合特征精度和特征使用。我们发现,每次决策都会提取并依赖最相关的特征,竞争特征的贡献较小。这些结果表明,多个特征维度分别代表了每个由多个项目组成的集合,而认知在为决策选择适当的证据方面是高效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Magnitude Discrimination: Effects of Internal Precision and Attentional Weighting of Feature Dimensions

Given a rich environment, how do we decide on what information to use? A view of a single entity (e.g., a group of birds) affords many distinct interpretations, including their number, average size, and spatial extent. An enduring challenge for cognition, therefore, is to focus resources on the most relevant evidence for any particular decision. In the present study, subjects completed three tasks—number discrimination, surface area discrimination, and convex hull discrimination—with the same stimulus set, where these three features were orthogonalized. Therefore, only the relevant feature provided consistent evidence for decisions in each task. This allowed us to determine how well humans discriminate each feature dimension and what evidence they relied on to do so. We introduce a novel computational approach that fits both feature precision and feature use. We found that the most relevant feature for each decision is extracted and relied on, with minor contributions from competing features. These results suggest that multiple feature dimensions are separately represented for each attended ensemble of many items and that cognition is efficient at selecting the appropriate evidence for a decision.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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