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Self-selected modular recurrent neural networks with postural and inertial subnetworks applied to complex movements

机译:具有姿势和惯性子网络的自选模块化递归神经网络,适用于复杂运动

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It has been shown that dynamic recurrent neural networks are successful in identifying the complex mapping relationship between full-wave-rectified electromyographic (EMG) signals and limb trajectories during complex movements. These connectionist models include two types of adaptive parameters: the interconnection weights between the units and the time constants associated to each neuron-like unit; they are governed by continuous-time equations. Due to their internal structure, these models are particularly appropriate to solve dynamical tasks (with time-varying input and output signals). We show in this paper that the introduction of a modular organization dedicated to different aspects of the dynamical mapping including privileged communication channels can refine the architecture of these recurrent networks. We first divide the initial individual network into two communicating subnetworks. These two modules receive the same EMG signals as input but are involved in different identification tasks related to position and acceleration. We then show that the introduction of an artificial distance in the model (using a Gaussian modulation factor of weights) induces a reduced modular architecture based on a self-elimination of null synaptic weights. Moreover, this self-selected reduced model based on two subnetworks performs the identification task better than the original single network while using fewer free parameters (better learning curve and better identification quality). We also show that this modular network exhibits several features that can be considered as biologically plausible after the learning process: self-selection of a specific inhibitory communicating path between both subnetworks after the learning process, appearance of tonic and phasic neurons, and coherent distribution of the values of the time constants within each subnetwork. [References: 49]
机译:研究表明,动态递归神经网络可以成功地识别复杂运动期间全波整流的肌电图(EMG)信号与肢体轨迹之间的复杂映射关系。这些连接主义模型包括两种类型的自适应参数:单元之间的互连权重以及与每个神经元样单元相关的时间常数。它们由连续时间方程式控制。由于其内部结构,这些模型特别适合解决动态任务(输入和输出信号随时间变化)。我们在本文中表明,专门针对动态映射的不同方面(包括特权通信通道)的模块化组织的引入可以改进这些循环网络的体系结构。我们首先将初始的单个网络划分为两个通信子网。这两个模块接收与输入相同的EMG信号,但涉及与位置和加速度有关的不同识别任务。然后,我们表明,在模型中引入人工距离(使用权重的高斯调制因子)会导致基于空突触权重的自消除的简化模块化体系结构。而且,这种基于两个子网的自选简化模型比原始单个网络更好地执行了识别任务,同时使用了更少的自由参数(更好的学习曲线和更好的识别质量)。我们还表明,该模块化网络在学习过程后展现出可被认为在生物学上看似合理的几个特征:学习过程后两个子网之间特定抑制性交流路径的自我选择,补品和相性神经元的出现以及相干分布每个子网中时间常数的值。 [参考:49]

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