We describe a stochastic, dynamical system capable of inference and learning in a probabilistic latent variable model. The most challenging problem in such models - sampling the posterior distribution over latent variables - is proposed to be solved by harnessing natural sources of stochasticity inherent in electronic and neural systems. We demonstrate this idea for a sparse coding model by deriving a continuous-time equation for inferring its latent variables via Langevin dynamics. The model parameters are learned by simultaneously evolving according to another continuous-time equation, thus bypassing the need for digital accumulators or a global clock. Moreover we show that Langevin dynamics lead to an efficient procedure for sampling from the posterior distribution in the 'L0 sparse' regime, where latent variables are encouraged to be set to zero as opposed to having a small L1 norm. This allows the model to properly incorporate the notion of sparsity rather than having to resort to a relaxed version of sparsity to make optimization tractable. Simulations of the proposed dynamical system on both synthetic and natural image datasets demonstrate that the model is capable of probabilistically correct inference, enabling learning of the dictionary as well as parameters of the prior.
翻译:我们描述一个能够在概率潜伏变量模型中进行推断和学习的随机、动态系统。这种模型中最具挑战性的问题——对潜伏变量的后部分布进行抽样,建议通过利用电子和神经系统中固有的自然孔径源来解决。我们通过测算一个连续时间方程式来推断其潜伏变量的稀散编码模型的构想,通过Langevin动力学来推断其潜伏变量。模型参数是通过根据另一个连续时间方程式同时演进而学习的,从而绕过数字蓄积器或全球时钟的需要。此外,我们还表明,Langevin动力学导致一个高效的程序,从“L0稀疏”系统中的后部分布中取样,鼓励将潜在变量设为零,而不是设一个小L1规范。这使得模型能够恰当地纳入宽度概念,而不是不得不采用宽松的宽松版使优化可感光度。在合成和自然图像数据集中模拟拟议的动态系统,从而表明,该模型能够作为先行的精确性参数,从而能够将模型作为先行的精确性矩阵学习。