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单词搜索过程中的语义和句法关联调节注意力与后续记忆之间的关系。

Semantic and Syntactic Associations During Word Search Modulate the Relationship Between Attention and Subsequent Memory.

作者信息

Zhou Wei, Mo Fei, Zhang Yunhong, Ding Jinhong

机构信息

a Capital Normal University.

b China National Institute of Standardization.

出版信息

J Gen Psychol. 2017 Jan-Mar;144(1):69-88. doi: 10.1080/00221309.2016.1258389.

Abstract

Two experiments were conducted to investigate how linguistic information influences attention allocation in visual search and memory for words. In Experiment 1, participants searched for the synonym of a cue word among five words. The distractors included one antonym and three unrelated words. In Experiment 2, participants were asked to judge whether the five words presented on the screen comprise a valid sentence. The relationships among words were sentential, semantically related or unrelated. A memory recognition task followed. Results in both experiments showed that linguistically related words produced better memory performance. We also found that there were significant interactions between linguistic relation conditions and memorization on eye-movement measures, indicating that good memory for words relied on frequent and long fixations during search in the unrelated condition but to a much lesser extent in linguistically related conditions. We conclude that semantic and syntactic associations attenuate the link between overt attention allocation and subsequent memory performance, suggesting that linguistic relatedness can somewhat compensate for a relative lack of attention during word search.

摘要

进行了两项实验,以研究语言信息如何影响视觉搜索中的注意力分配以及单词记忆。在实验1中,参与者在五个单词中搜索提示词的同义词。干扰项包括一个反义词和三个无关单词。在实验2中,参与者被要求判断屏幕上呈现的五个单词是否构成一个有效的句子。单词之间的关系是句子关系、语义相关或无关。随后进行了记忆识别任务。两个实验的结果都表明,语言相关的单词产生了更好的记忆表现。我们还发现,语言关系条件和记忆在眼动测量上存在显著的交互作用,这表明在无关条件下,对单词的良好记忆依赖于搜索过程中频繁而长时间的注视,但在语言相关条件下程度要小得多。我们得出结论,语义和句法关联减弱了显性注意力分配与后续记忆表现之间的联系,这表明语言相关性在一定程度上可以弥补单词搜索过程中相对缺乏的注意力。

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