Neural Stochastic Differential Equations (NSDE) have been trained as both Variational Autoencoders, and as GANs. However, the resulting Stochastic Differential Equations can be hard to interpret or analyse due to the generic nature of the drift and diffusion fields. By restricting our NSDE to be of the form of Langevin dynamics, and training it as a VAE, we obtain NSDEs that lend themselves to more elaborate analysis and to a wider range of visualisation techniques than a generic NSDE. More specifically, we obtain an energy landscape, the minima of which are in one-to-one correspondence with latent states underlying the used data. This not only allows us to detect states underlying the data dynamics in an unsupervised manner, but also to infer the distribution of time spent in each state according to the learned SDE. More in general, restricting an NSDE to Langevin dynamics enables the use of a large set of tools from computational molecular dynamics for the analysis of the obtained results.
翻译:神经斯托式差异(NSDE)已经作为变化式自动电解器和GANs(NSDE)被培训为变化式自动电解器和GANs(NSDE) 。 然而,由于漂移和扩散场的通用性质,由此形成的蒸发式差异可能很难解释或分析。通过将我们的NSDE限制为Langevin动态的形式,并将它培训为VAE,我们获得了NSDE(NSDE),这比普通NSDE(NSDE)更能进行更细致的分析,更具体地说,我们获得了一种能源景观,其中的微小的分布在与使用过的数据的潜在状态的一对一对应中。这不仅使我们能够以不受监督的方式探测数据动态背后的状态,而且能够根据所学的SDE(SDE)推断每个州所花费的时间分布。更一般地说,将NSDE限制为Langevin动态,从而能够使用从计算分子动态中获取的大量工具来分析所获得的结果。