奖励学习过程中注意选择的准确性影响着价值驱动注意的机制。

IF 3 1区 心理学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Oudeng Jia, Qingsong Tan, Sihan Zhang, Ke Jia, Mengyuan Gong
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引用次数: 0

摘要

奖励预测项目即使在任务无关的情况下也能吸引注意力。虽然价值驱动的注意通常概括为具有关键奖励相关特征的刺激(例如,红色),但最近的证据表明,基于特征关系的另一种概括机制(例如,红色)。在这里,我们研究了奖励相关特征的关系编码是否通过操纵搜索模式和目标-分心物相似性在不同的学习环境中起作用。结果表明,无论目标-分心物是否相似,单例搜索训练都会诱发价值驱动的关系注意(实验1a-1b)。相反,特征搜索训练只在目标和干扰物不相似时产生价值驱动的关系注意,而在目标和干扰物相似时则不会产生价值驱动的关系注意(实验2a-2c)。结果表明,粗选择训练(单项搜索或不同项之间的特征搜索)促进了奖励相关特征的关系编码,而精选择训练(相似项之间的特征搜索)促进了奖励相关特征的精确编码。因此,奖励学习过程中目标选择的精确性决定了价值驱动的注意机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The precision of attention selection during reward learning influences the mechanisms of value-driven attention.

The precision of attention selection during reward learning influences the mechanisms of value-driven attention.

The precision of attention selection during reward learning influences the mechanisms of value-driven attention.

The precision of attention selection during reward learning influences the mechanisms of value-driven attention.

Reward-predictive items capture attention even when task-irrelevant. While value-driven attention typically generalizes to stimuli sharing critical reward-associated features (e.g., red), recent evidence suggests an alternative generalization mechanism based on feature relationships (e.g., redder). Here, we investigated whether relational coding of reward-associated features operates across different learning contexts by manipulating search mode and target-distractor similarity. Results showed that singleton search training induced value-driven relational attention regardless of target-distractor similarity (Experiments 1a-1b). In contrast, feature search training produced value-driven relational attention only when targets and distractors were dissimilar, but not when they were similar (Experiments 2a-2c). These findings indicate that coarse selection training (singleton search or feature search among dissimilar items) promotes relational coding of reward-associated features, while fine selection (feature search among similar items) engages precise feature coding. The precision of target selection during reward learning thus critically determines value-driven attentional mechanisms.

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来源期刊
CiteScore
5.40
自引率
7.10%
发文量
29
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