论文标题
与生物学约束的解剖:功能细胞类型的理论
Disentanglement with Biological Constraints: A Theory of Functional Cell Types
论文作者
论文摘要
大脑中的神经元通常用于特定的任务变量。此外,在机器学习中,这种散布的表示形式受到了极大的追捧。在这里,我们在数学上证明了对神经元的简单生物学限制,即活动和权重的非阴性和能源效率,通过强迫神经元成为任务变化的单一因素的选择性,从而促进了这种被抢断的脱节表示。我们证明了这些限制导致各种任务和体系结构(包括变异自动编码器)的分离。我们还使用该理论来解释为什么大脑将其细胞分配为不同的细胞类型,例如网格和对象矢量细胞,并解释何时大脑会响应响应纠缠的任务因素而纠缠代表。总体而言,这项工作提供了数学理解,即为什么大脑中的单个神经元通常代表单一的人解剖因素,而迈向理解任务结构的步骤塑造了大脑表示的结构。
Neurons in the brain are often finely tuned for specific task variables. Moreover, such disentangled representations are highly sought after in machine learning. Here we mathematically prove that simple biological constraints on neurons, namely nonnegativity and energy efficiency in both activity and weights, promote such sought after disentangled representations by enforcing neurons to become selective for single factors of task variation. We demonstrate these constraints lead to disentanglement in a variety of tasks and architectures, including variational autoencoders. We also use this theory to explain why the brain partitions its cells into distinct cell types such as grid and object-vector cells, and also explain when the brain instead entangles representations in response to entangled task factors. Overall, this work provides a mathematical understanding of why single neurons in the brain often represent single human-interpretable factors, and steps towards an understanding task structure shapes the structure of brain representation.