计算标记显示了复杂学习环境中阅读障碍和ADHD的特殊缺陷。

IF 3 1区 心理学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Yafit Gabay, Lana Jacob, Atil Mansour, Uri Hertz
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引用次数: 0

摘要

目前的研究考察了患有神经发育障碍的个体如何在多维环境中导航学习的复杂性,这些环境以不确定的维度值为标志,没有明确的指导。参与者参与了一个类似游戏的复杂强化学习任务,在这个任务中,决定奖励的刺激维度是未知的,这就要求参与者发现哪一个维度应该被优先考虑,以检测最大的奖励。为了进行比较,包括一个具有简单强化学习任务的控制条件,其中明确显示了预测维度。研究结果表明,与对照组相比,患有多动症和阅读障碍的个体在这两项任务中的表现都有所下降。计算模型显示,与对照组相比,患有多动症的参与者使用要求更高但更优的贝叶斯推理策略的能力明显下降,而患有阅读障碍的参与者则表现出更高的衰减率,表明对最近学习到的关联的折扣更快。这些发现阐明了自然学习环境中神经发育障碍的不同计算标记。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Computational markers show specific deficits for dyslexia and ADHD in complex learning settings.

Computational markers show specific deficits for dyslexia and ADHD in complex learning settings.

Computational markers show specific deficits for dyslexia and ADHD in complex learning settings.

The current study examined how individuals with neurodevelopmental disorders navigate the complexities of learning within multidimensional environments marked by uncertain dimension values and without explicit guidance. Participants engaged in a game-like complex reinforcement learning task in which the stimuli dimension determining reward remained undisclosed, necessitating that participants discover which dimension should be prioritized for detecting the maximum reward. For comparison, a control condition featuring a simple reinforcement learning task was included in which the predictive dimension was explicitly revealed. The findings showed that individuals with ADHD and dyslexia exhibited reduced performance across both tasks compared to their controls. Computational modeling revealed that relative to controls, participants with ADHD exhibited a markedly decreased ability to utilize demanding yet more optimal Bayesian inference strategies, whereas participants with dyslexia demonstrated heightened decay rates, indicating quicker discounting of recently learned associations. These findings illuminate different computational markers of neurodevelopmental disorders in naturalistic learning contexts.

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来源期刊
CiteScore
5.40
自引率
7.10%
发文量
29
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