Neural Dynamics Discovery via Gaussian Process Recurrent Neural Networks

07/01/2019
by   Qi She, et al.
9

Latent dynamics discovery is challenging in extracting complex dynamics from high-dimensional noisy neural data. Many dimensionality reduction methods have been widely adopted to extract low-dimensional, smooth and time-evolving latent trajectories. However, simple state transition structures, linear embedding assumptions, or inflexible inference networks impede the accurate recovery of dynamic portraits. In this paper, we propose a novel latent dynamic model that is capable of capturing nonlinear, non-Markovian, long short-term time-dependent dynamics via recurrent neural networks and tackling complex nonlinear embedding via non-parametric Gaussian process. Due to the complexity and intractability of the model and its inference, we also provide a powerful inference network with bi-directional long short-term memory networks that encode both past and future information into posterior distributions. In the experiment, we show that our model outperforms other state-of-the-art methods in reconstructing insightful latent dynamics from both simulated and experimental neural datasets with either Gaussian or Poisson observations, especially in the low-sample scenario. Our codes and additional materials are available at https://github.com/sheqi/GP-RNN_UAI2019.

READ FULL TEXT

page 2

page 3

page 4

page 5

page 6

page 7

page 9

page 10

research
05/27/2021

Recurrent-type Neural Networks for Real-time Short-term Prediction of Ship Motions in High Sea State

The prediction capability of recurrent-type neural networks is investiga...
research
04/06/2022

Deep transfer learning for system identification using long short-term memory neural networks

Recurrent neural networks (RNNs) have many advantages over more traditio...
research
09/25/2019

The Dynamical Gaussian Process Latent Variable Model in the Longitudinal Scenario

The Dynamical Gaussian Process Latent Variable Models provide an elegant...
research
12/11/2020

Convolutional LSTM Neural Networks for Modeling Wildland Fire Dynamics

As the climate changes, the severity of wildland fires is expected to wo...
research
09/23/2019

Recurrent Neural Network-based Model for Accelerated Trajectory Analysis in AIMD Simulations

The presented work demonstrates the training of recurrent neural network...
research
11/05/2020

Predictive Process Model Monitoring using Recurrent Neural Networks

The field of predictive process monitoring focuses on modelling future c...
research
01/21/2022

On the adaptation of recurrent neural networks for system identification

This paper presents a transfer learning approach which enables fast and ...

Please sign up or login with your details

Forgot password? Click here to reset