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首页> 外文期刊>The Journal of Neuroscience: The Official Journal of the Society for Neuroscience >A two-stage unsupervised learning algorithm reproduces multisensory enhancement in a neural network model of the corticotectal system.
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A two-stage unsupervised learning algorithm reproduces multisensory enhancement in a neural network model of the corticotectal system.

机译:两阶段无监督学习算法在皮质直肠系统的神经网络模型中再现了多感觉增强。

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摘要

Multisensory enhancement (MSE) is the augmentation of the response to sensory stimulation of one modality by stimulation of a different modality. It has been described for multisensory neurons in the deep superior colliculus (DSC) of mammals, which function to detect, and direct orienting movements toward, the sources of stimulation (targets). MSE would seem to improve the ability of DSC neurons to detect targets, but many mammalian DSC neurons are unimodal. MSE requires descending input to DSC from certain regions of parietal cortex. Paradoxically, the descending projections necessary for MSE originate from unimodal cortical neurons. MSE, and the puzzling findings associated with it, can be simulated using a model of the corticotectal system. In the model, a network of DSC units receives primary sensory input that can be augmented by modulatory cortical input. Connection weights from primary and modulatory inputs are trained in stages one (Hebb) and two (Hebb-anti-Hebb), respectively, of an unsupervised two-stage algorithm. Two-stage training causes DSC units to extract information concerning simulated targets from their inputs. It also causes the DSC to develop a mixture of unimodal and multisensory units. The percentage of DSC multisensory units is determined by the proportion of cross-modal targets and by primary input ambiguity. Multisensory DSC units develop MSE, which depends on unimodal modulatory connections. Removal of the modulatory influence greatly reduces MSE but has little effect on DSC unit responses to stimuli of a single modality. The correspondence between model and data suggests that two-stage training captures important features of self-organization in the real corticotectal system.
机译:多感官增强(MSE)是通过刺激不同的模态来增强对一种模态的感官刺激的响应。已经针对哺乳动物的深上丘(DSC)中的多感觉神经元进行了描述,该神经元的功能是检测刺激源(目标)并将其定向到刺激源(目标)。 MSE似乎可以提高DSC神经元检测靶标的能力,但是许多哺乳动物的DSC神经元是单峰的。 MSE需要从顶叶皮质的某些区域向DSC递减输入。矛盾的是,MSE所需的递减投影来自单峰皮质神经元。 MSE及其相关的令人困惑的发现可以使用皮质直肠系统模型进行模拟。在该模型中,DSC单元网络接收主要的感觉输入,可以通过调制皮质输入来增强这些感觉输入。来自初级和调制输入的连接权重分别在无监督两阶段算法的第一阶段(Hebb)和第二阶段(Hebb-anti-Hebb)中进行训练。两阶段训练使DSC单元从其输入中提取有关模拟目标的信息。这也导致DSC开发出单峰和多感官单元的混合物。 DSC多感官单元的百分比由交叉模式目标的比例和主要输入歧义确定。多传感器DSC单元开发了MSE,它依赖于单峰调制连接。消除调节影响大大降低了MSE,但对DSC单元对单一模式刺激的响应影响很小。模型与数据之间的对应关系表明,两阶段训练可以捕捉到真正的皮质直肠系统自组织的重要特征。

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