Enabling hyperparameter optimization in sequential autoencoders for spiking neural data
Keshtkaran, Mohammad Reza, Pandarinath, Chethan
–Neural Information Processing Systems
Continuing advances in neural interfaces have enabled simultaneous monitoring of spiking activity from hundreds to thousands of neurons. To interpret these large-scale data, several methods have been proposed to infer latent dynamic structure from high-dimensional datasets. One recent line of work uses recurrent neural networks in a sequential autoencoder (SAE) framework to uncover dynamics. SAEs are an appealing option for modeling nonlinear dynamical systems, and enable a precise link between neural activity and behavior on a single-trial basis. However, the very large parameter count and complexity of SAEs relative to other models has caused concern that SAEs may only perform well on very large training sets.
Neural Information Processing Systems
Mar-19-2020, 03:17:11 GMT