Department of Physics, University of Washington, Seattle, WA 98195;
Department of Physics, University of Washington, Seattle, WA 98195.
Proc Natl Acad Sci U S A. 2019 May 7;116(19):9592-9597. doi: 10.1073/pnas.1815910116. Epub 2019 Apr 23.
Performing a stereotyped behavior successfully over time requires both maintaining performance quality and adapting efficiently to environmental or physical changes affecting performance. The bird song system is a paradigmatic example of learning a stereotyped behavior and therefore is a good place to study the interaction of these two goals. Through a model of bird song learning, we show how instability in neural representation of stable behavior confers advantages for adaptation and maintenance with minimal cost to performance quality. A precise, temporally sparse sequence from the premotor nucleus HVC is crucial to the performance of song in songbirds. We find that learning in the presence of sequence variations facilitates rapid relearning after shifts in the target song or muscle structure and results in decreased error with neuron loss. This robustness is due to the prevention of the buildup of correlations in the learned connectivity. In the absence of sequence variations, these correlations grow, due to the relatively low dimensionality of the exploratory variation in comparison with the number of plastic synapses. Our results suggest one would expect to see variability in neural systems executing stereotyped behaviors, and this variability is an advantageous feature rather than a challenge to overcome.
随着时间的推移,成功地执行刻板行为既需要保持性能质量,又需要有效地适应影响性能的环境或物理变化。鸟类鸣叫系统是学习刻板行为的典范范例,因此是研究这两个目标相互作用的好地方。通过鸟类鸣叫学习模型,我们展示了稳定行为的神经表示中的不稳定性如何在不对性能质量造成最小代价的情况下为适应和维持提供优势。来自运动前核 HVC 的精确、时间稀疏的序列对于鸣禽的鸣唱表现至关重要。我们发现,在序列变化的存在下进行学习有助于在目标鸣唱或肌肉结构发生变化后快速重新学习,并导致神经元丢失时的错误减少。这种鲁棒性是由于防止了在学习的连接中建立相关性。在没有序列变化的情况下,由于与可塑性突触数量相比,探索性变化的相对低维数,这些相关性会增长。我们的研究结果表明,人们期望在执行刻板行为的神经系统中看到可变性,这种可变性是一个有利的特征,而不是需要克服的挑战。