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概率检测机制与运动学习

Probability detection mechanisms and motor learning.

作者信息

Lungu O V, Wächter T, Liu T, Willingham D T, Ashe J

机构信息

Brain Sciences Center, Minneapolis VAMC, One Veterans Drive, Minneapolis, MN 55417, USA.

出版信息

Exp Brain Res. 2004 Nov;159(2):135-50. doi: 10.1007/s00221-004-1945-7. Epub 2004 Jul 16.

Abstract

The automatic detection of patterns or regularities in the environment is central to certain forms of motor learning, which are largely procedural and implicit. The rules underlying the detection and use of probabilistic information in the perceptual-motor domain are largely unknown. We conducted two experiments involving a motor learning task with direct and crossed mapping of motor responses in which probabilities were present at the stimulus set level, the response set level, and at the level of stimulus-response (S-R) mapping. We manipulated only one level at a time, while controlling for the other two. The results show that probabilities were detected only when present at the S-R mapping and motor levels, but not at the perceptual one (experiment 1), unless the perceptual features have a dimensional overlap with the S-R mapping rule (experiment 2). The effects of probability detection were mostly facilitatory at the S-R mapping, both facilitatory and inhibitory at the perceptual level, and predominantly inhibitory at the response-set level. The facilitatory effects were based on learning the absolute frequencies first and transitional probabilities later (for the S-R mapping rule) or both types of information at the same time (for perceptual level), whereas the inhibitory effects were based on learning first the transitional probabilities. Our data suggest that both absolute frequencies and transitional probabilities are used in motor learning, but in different temporal orders, according to the probabilistic properties of the environment. The results support the idea that separate neural circuits may be involved in detecting absolute frequencies as compared to transitional probabilities.

摘要

自动检测环境中的模式或规律是某些形式的运动学习的核心,这些运动学习在很大程度上是程序性的和隐性的。在感知运动领域中,检测和使用概率信息的潜在规则在很大程度上尚不清楚。我们进行了两项实验,涉及一个运动学习任务,其中运动反应有直接和交叉映射,在刺激集水平、反应集水平以及刺激-反应(S-R)映射水平上存在概率。我们每次只操纵一个水平,同时控制另外两个水平。结果表明,只有当概率出现在S-R映射和运动水平时才能被检测到,而在感知水平则不能(实验1),除非感知特征与S-R映射规则存在维度重叠(实验2)。概率检测的影响在S-R映射时大多是促进性的,在感知水平时既有促进性又有抑制性,在反应集水平时主要是抑制性的。促进性影响基于首先学习绝对频率,然后学习转移概率(对于S-R映射规则),或者在感知水平上同时学习两种类型的信息,而抑制性影响基于首先学习转移概率。我们的数据表明,绝对频率和转移概率在运动学习中都被使用,但根据环境的概率特性,它们的时间顺序不同。结果支持这样一种观点,即与转移概率相比,检测绝对频率可能涉及不同的神经回路。

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