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作者 | Rui Wang; Yuan Shen; Peter Tino; Andrew Welchman; Zoe Kourtzi
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出版日期 | 2016
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会议名称 | 2016年第一届北京视觉科学会议
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会议日期 | 2016-07
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会议地点 | 北京
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关键词 | statistical learning
fMRI
cortico-striatal circuits
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其他题名 | Cortico-striatal mechanisms for learning predictive statistics in the human brain
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英文摘要 |
Purpose: Experience is known to facilitate our ability to extract regularities from simple repetitive patterns to more complex probabilistic combinations (e.g. as in language, music, navigation). However, little is known about the neural mechanisms that mediate our ability to learn hierarchical structures.
Methods: Here we combine behavioral and functional MRI measurements to investigate the brain circuits involved in learning of hierarchically organized structures. In particular, we employed variable memory length Markov models to design temporal sequences of increasing complexity. We trained observers with sequences of four di?erent symbols that were determined first by frequency statistics (i.e. occurrence probability per symbol) and then by context-based statistics (i.e. the probability of a given symbol appearing relates to the context provided by the preceding symbol). Observers performed a prediction task during which they indicated which symbol they expected to appear following exposure to a sequence of symbols.
Results: Our results demonstrate that cortico-striatal mechanisms mediate learning of behaviorally-relevant statistics that are predictive of upcoming events. Importantly, we show that individual variability in learning relates to two di?erent learning strategies: fast learners adopt a maximization strategy (i.e. learning the most probable event per context) while slower learners focus on matching (i.e. memorize all presented combinations). Correlating fMRI activation with individual learning strategy demonstrates that learning by matching engages the visual cortico-striatal loop including hippocampal regions. By contrast, learning by maximization involves interactions between executive control and motor cortico-striatal loops.
Conclusion: Thus, our findings suggest dissociable cortico-striatal routes that promote structure- outperforms rote- learning and facilitate our ability to extract predictive statistics in variable environments. |
收录类别 | 其他
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会议主办者 | 中国科学院心理研究所
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会议网址 | http://vision.csp.escience.cn/dct/page/1
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学科主题 | 感知觉心理学
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语种 | 英语
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源URL | [http://ir.psych.ac.cn/handle/311026/20829]  |
专题 | 心理研究所_心理所主办学术会议_2016年第一届北京视觉科学会议_会议摘要
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作者单位 | 1.Department of Psychology, University of Cambridge, Cambridge, UK, CB2 3EB 2.Department of Psychology, Peking University, Beijing, China, 100871 3.School of Computer Science, University of Birmingham, Birmingham, UK, B15 2TT
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推荐引用方式 GB/T 7714 |
Rui Wang,Yuan Shen,Peter Tino,等. 学习预测统计规律的皮层-纹状体神经机制[C]. 见:2016年第一届北京视觉科学会议. 北京. 2016-07.http://vision.csp.escience.cn/dct/page/1.
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