How do humans and other animals learn new tasks? A wave of brain recording studies has investigated how neural representations change during task learning, with a focus on how tasks can be acquired and coded in ways that minimise mutual interference. We review recent work that has explored the geometry and dimensionality of neural task representations in neocortex, and computational models that have exploited these findings to understand how the brain may partition knowledge between tasks. We discuss how ideas from machine learning, including those that combine supervised and unsupervised learning, are helping neuroscientists understand how natural tasks are learned and coded in biological brains.
翻译:人类和其他动物如何学习新任务?一波脑记录研究调查了任务学习期间神经结构的变化,重点是如何以尽量减少相互干扰的方式获取和编码任务。我们审查了最近研究新皮层神经任务结构的几何和多面性的工作,以及利用这些发现来理解大脑如何在任务之间分配知识的计算模型。我们讨论了机器学习中的想法是如何帮助神经科学家理解如何在生物大脑中学习和编码自然任务的。