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首页> 外文期刊>Frontiers in Computational Neuroscience >Modeling the Dynamics of Human Brain Activity with Recurrent Neural Networks
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Modeling the Dynamics of Human Brain Activity with Recurrent Neural Networks

机译:用递归神经网络建模人脑活动的动力学

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Encoding models are used for predicting brain activity in response to sensory stimuli with the objective of elucidating how sensory information is represented in the brain. Encoding models typically comprise a nonlinear transformation of stimuli to features (feature model) and a linear convolution of features to responses (response model). While there has been extensive work on developing better feature models, the work on developing better response models has been rather limited. Here, we investigate the extent to which recurrent neural network models can use their internal memories for nonlinear processing of arbitrary feature sequences to predict feature-evoked response sequences as measured by functional magnetic resonance imaging. We show that the proposed recurrent neural network models can significantly outperform established response models by accurately estimating long-term dependencies that drive hemodynamic responses. The results open a new window into modeling the dynamics of brain activity in response to sensory stimuli.
机译:编码模型用于预测响应于感觉刺激的大脑活动,目的是阐明在大脑中如何表示感觉信息。编码模型通常包括刺激对特征的非线性变换(特征模型)和特征对响应的线性卷积(响应模型)。尽管在开发更好的特征模型方面进行了大量工作,但是在开发更好的响应模型方面的工作却非常有限。在这里,我们研究了递归神经网络模型可以使用其内部存储器对任意特征序列进行非线性处理的程度,以预测功能磁共振成像测量的特征诱发反应序列。我们表明,通过精确估计驱动血液动力学响应的长期依赖性,提出的递归神经网络模型可以显着优于已建立的响应模型。结果为模拟大脑活动的动态变化打开了一个新窗口。

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