Variational autoencoder (VAE) is a very popular and well-investigated generative model in neural learning research. To leverage VAE in practical tasks dealing with a massive dataset of large dimensions, it is required to deal with the difficulty of building low variance evidence lower bounds (ELBO). Markov Chain Monte Carlo (MCMC) is an effective approach to tighten the ELBO for approximating the posterior distribution and Hamiltonian Variational Autoencoder (HVAE) is an effective MCMC inspired approach for constructing a low-variance ELBO that is amenable to the reparameterization trick. The HVAE adapted the Hamiltonian dynamic flow into variational inference that significantly improves the performance of the posterior estimation. We propose in this work a Langevin dynamic flow-based inference approach by incorporating the gradients information in the inference process through the Langevin dynamic which is a kind of MCMC based method similar to HVAE. Specifically, we employ a quasi-symplectic integrator to cope with the prohibit problem of the Hessian computing in naive Langevin flow. We show the theoretical and practical effectiveness of the proposed framework with other gradient flow-based methods.
翻译:在神经学习研究中,挥发性自动读数器是一种非常受欢迎和调查良好的遗传模型。为了在涉及大尺寸的庞大数据集的实际任务中利用伏发性能,必须处理建立低差异证据下限的困难(ELBO)。Markov 链条蒙特卡洛(MCMC)是通过一种有效的方法,通过兰埃文动力将梯度信息纳入推论过程,将梯度信息纳入推论过程,这是一种以汉密尔顿光学为根据的以汉密尔顿光学为主的低可变性ELBO(HVAE)的激励方法。具体地说,我们采用了一种准中位性化的ELBO(ELBO),以适应重新计量的技巧。HVAE将汉密尔顿动能动力流变成变异推推法,以大大改善海边估计的性能。我们在此工作中建议采用一种兰埃文动态推论法,将梯度信息纳入推论过程,这是一种以兰埃文为主的、以HVAE为基础的一种方法。具体地,我们采用了一种准中位感测学分分法,用以应对兰流流和海流的其他变化法。