Neural population activity is theorized to reflect an underlying dynamical structure. This structure can be accurately captured using state space models with explicit dynamics, such as those based on recurrent neural networks (RNNs). However, using recurrence to explicitly model dynamics necessitates sequential processing of data, slowing real-time applications such as brain-computer interfaces. Here we introduce the Neural Data Transformer (NDT), a non-recurrent alternative. We test the NDT's ability to capture autonomous dynamical systems by applying it to synthetic datasets with known dynamics and data from monkey motor cortex during a reaching task well-modeled by RNNs. The NDT models these datasets as well as state-of-the-art recurrent models. Further, its non-recurrence enables 3.9ms inference, well within the loop time of real-time applications and more than 6 times faster than recurrent baselines on the monkey reaching dataset. These results suggest that an explicit dynamics model is not necessary to model autonomous neural population dynamics. Code: https://github.com/snel-repo/neural-data-transformers
翻译:神经人口活动是用来反映内在动态结构的理论。可以用具有明确动态的国家空间模型,例如基于经常性神经网络(RNNS)的模型来精确地捕捉这一结构。然而,利用重复来进行明确的模型动态,这就要求数据按顺序处理,减缓脑计算机界面等实时应用,减缓脑计算机界面等实时应用。这里我们引入了非经常性的替代方法“神经数据变换器”(NDT),我们测试NDT是否有能力捕捉自主动态系统,将它应用到具有已知动态动态的合成数据集和由猴子发动机皮层提供的数据,用于由RNNNS制成的成熟任务。NDT模型这些数据集以及最先进的经常性模型。此外,它的不重复使得3.9m推断成为实时应用的循环时间,比猴子到达数据集的经常基线快6倍以上。这些结果表明,在模拟自主神经人口动态动态时,不需要明确的动态模型。代码: https://github.com/snel-repo/neural-data-transforps exfects。