心理学报 ›› 2026, Vol. 58 ›› Issue (4): 590-602.doi: 10.3724/SP.J.1041.2026.0590 cstr: 32110.14.2026.0590
收稿日期:2025-03-17
发布日期:2026-01-16
出版日期:2026-04-25
通讯作者:
唐溢, E-mail: tangy436@126.com基金资助:
TANG Yi1(
), ZHAO Yajun2, ZENG Qingzhang3, ZHANG Zhijun3, WU Shengnan1
Received:2025-03-17
Online:2026-01-16
Published:2026-04-25
摘要:
统计学习是人类从环境中提取规律信息的关键认知能力, 其跨通道迁移的特性与机制仍存理论争议。本研究通过4个实验系统考察统计学习在视听通道间的迁移机制。实验1采用经典统计学习范式, 验证了个体基于动物图片的视觉统计学习能力; 实验2在单一视觉通道学习后, 分别以动物图片和动物声音进行测试, 发现两种条件下统计学习效果无显著差异, 表明存在从视觉到听觉的跨通道迁移; 实验3通过在视听双通道同步呈现动物图片与无意义音节刺激流, 发现无论听觉刺激流是否具有统计规律, 视觉向听觉的统计学习迁移效应均稳定存在; 实验4进一步在视听双通道同步呈现动物声音与无意义图形刺激流, 结果显示从听觉向视觉的跨通道迁移亦显著。本研究综合表明, 统计学习具备稳定的跨通道双向迁移能力, 支持统计学习具有通道一般性的理论观点, 存在多层平行的统计结构表征系统可能是其认知基础。
中图分类号:
唐溢, 赵亚军, 曾清樟, 张智君, 吴圣楠. (2026). 单通道和多通道下的统计学习跨通道迁移*. 心理学报, 58(4), 590-602.
TANG Yi, ZHAO Yajun, ZENG Qingzhang, ZHANG Zhijun, WU Shengnan. (2026). Cross-modal transfer of statistical learning under unimodal and multimodal learning conditions. Acta Psychologica Sinica, 58(4), 590-602.
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