可操作对象的语义特征生成规范。

IF 2.6 3区 心理学 Q2 PSYCHOLOGY
Cognitive Neuropsychology Pub Date : 2023-05-01 Epub Date: 2024-01-12 DOI:10.1080/02643294.2023.2279185
Daniela Valério, Akbar Hussain, Jorge Almeida
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引用次数: 0

摘要

特征生成任务和特征数据库对于理解知识在语义记忆中的组织方式非常重要,因为它们不仅反映了个体对对象的信息类型,而且反映了对象在概念上是如何表示的。传统上,语义规范关注于各种对象类别,因此每个语义类别的概念数量很少。这里,我们的主要目标是为一类对象(可操作对象)创建一个更细粒度的特征数据库。该数据库有助于理解类别内特定于内容的处理。为了实现这一目标,我们要求130名参与者自由地为80个可操作对象生成特征,另一组32名参与者为相同的对象生成动作特征。然后,我们将我们的数据库与其他已发布的语义规范进行比较,发现它们之间具有很高的相似性。在我们的数据库中,我们使用Spearman关联、Baker's gamma指数和cophenetic关联计算了对象之间在视觉、功能、百科全书和动作特征类型方面的相似性。我们发现,根据特征类型,物体以一种独特而有意义的方式分组。最后,我们通过要求三组参与者在操纵生产频率的同时执行特征验证实验来测试数据库的有效性。我们的结果表明,参与者可以识别并将我们的数据库的特征与特定的可操作对象联系起来。参与者验证高频特征的速度要快于低频特征。总的来说,我们的数据为我们如何处理可操作的物体提供了重要的见解,并可用于进一步告知物体处理和识别的认知和神经理论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic feature production norms for manipulable objects.

Feature generation tasks and feature databases are important for understanding how knowledge is organized in semantic memory, as they reflect not only the kinds of information that individuals hold about objects but also how objects are conceptually represented. Traditionally, semantic norms focus on a variety of object categories and, as a result, have a small number of concepts per semantic category. Here, our main goal is to create a more fine-grained feature database exclusively for one category of objects-manipulable objects. This database contributes to the understanding of within-category, content-specific processing. To achieve this, we asked 130 participants to freely generate features for 80 manipulable objects and another group of 32 participants to generate action features for the same objects. We then compared our databases with other published semantic norms and found high similarity between them. In our databases, we calculated the similarity between objects in terms of visual, functional, encyclopaedic, and action feature types using Spearman correlation, Baker's gamma index, and cophenetic correlation. We discovered that objects were grouped in a distinctive and meaningful way according to feature type. Finally, we tested the validity of our databases by asking three groups of participants to perform a feature verification experiment while manipulating production frequency. Our results demonstrate that participants can recognize and associate the features of our databases with specific manipulable objects. Participants were faster to verify high-frequency features than low-frequency features. Overall, our data provide important insights into how we process manipulable objects and can be used to further inform cognitive and neural theories of object processing and identification.

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来源期刊
Cognitive Neuropsychology
Cognitive Neuropsychology 医学-心理学
CiteScore
5.50
自引率
11.80%
发文量
23
审稿时长
>12 weeks
期刊介绍: Cognitive Neuropsychology is of interest to cognitive scientists and neuroscientists, neuropsychologists, neurologists, psycholinguists, speech pathologists, physiotherapists, and psychiatrists.
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