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The advantage of flexible neuronal tunings in neural network models for motor learning

机译:灵活的神经元调整在运动学习神经网络模型中的优势

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Human motor adaptation to novel environments is often modeled by a basis function network that transforms desired movement properties into estimated forces. This network employs a layer of nodes that have fixed broad tunings that generalize across the input domain. Learning is achieved by updating the weights of these nodes in response to training experience. This conventional model is unable to account for rapid flexibility observed in human spatial generalization during motor adaptation. However, added plasticity in the widths of the basis function tunings can achieve this flexibility, and several neurophysiological experiments have revealed flexibility in tunings of sensorimotor neurons. We found a model, Locally Weighted Projection Regression (LWPR), which uniquely possesses the structure of a basis function network in which both the weights and tuning widths of the nodes are updated incrementally during adaptation. We presented this LWPR model with training functions of different spatial complexities and monitored incremental updates to receptive field widths. An inverse pattern of dependence of receptive field adaptation on experienced error became evident, underlying both a relationship between generalization and complexity, and a unique behavior in which generalization always narrows after a sudden switch in environmental complexity. These results implicate a model that is flexible in both basis function widths and weights, like LWPR, as a viable alternative model for human motor adaptation that can account for previously observed plasticity in spatial generalization. This theory can be tested by using the behaviors observed in our experiments as novel hypotheses in human studies.
机译:人机对新环境的适应性通常由基本功能网络建模,该功能将所需的运动特性转换为估计的力。该网络使用一层具有固定的广泛调整的节点层,这些调整可在整个输入域中推广。通过根据培训经验更新这些节点的权重来实现学习。这种传统模型无法解释在运动适应过程中在人类空间概括中观察到的快速灵活性。但是,在基函数调整的宽度中增加可塑性可以实现这种灵活性,并且一些神经生理学实验表明在感觉运动神经元的调整中具有灵活性。我们发现了一个模型,即局部加权投影回归(LWPR),该模型独特地具有基函数网络的结构,其中,节点的权重和调整宽度在自适应过程中都不断更新。我们提出了具有不同空间复杂度的训练功能的LWPR模型,并监控了对接收场宽度的增量更新。接受场适应对经历的错误的依赖关系的倒立模式变得很明显,既反映了泛化和复杂性之间的关系,又表现出独特的行为,其中,在环境复杂性突然变化之后,泛化总是变窄。这些结果表明,像LWPR这样的在基函数宽度和权重上都灵活的模型,可以作为人类运动适应性的可行替代模型,该模型可以解释先前在空间概括中观察到的可塑性。可以通过使用我们在实验中观察到的行为作为人类研究中的新假设来检验这一理论。

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