论文标题
Fokker-Planck方程的自s谐情绪
Self-Consistency of the Fokker-Planck Equation
论文作者
论文摘要
Fokker-Planck方程(FPE)是控制ITô过程密度演变的部分微分方程,对于统计物理学和机器学习的文献非常重要。 FPE可以被视为连续性方程,其中密度的变化完全由时间变化的速度场决定。重要的是,该速度场也取决于当前密度函数。结果,可以证明地面真相速度字段是定点方程的解决方案,即我们称为自偏见的属性。在本文中,我们利用这一概念来设计假设速度场的潜在功能,并证明,如果这种功能在训练过程中减少到零,则假设速度场产生的密度轨迹会在Wasserstein-2含义中转化为FPE的溶液。所提出的潜在函数可与基于神经网络的参数化相提并论,因为可以有效地计算相对于参数的随机梯度。一旦训练了一个参数化模型,例如神经普通微分方程,我们就可以生成FPE的整个轨迹。
The Fokker-Planck equation (FPE) is the partial differential equation that governs the density evolution of the Itô process and is of great importance to the literature of statistical physics and machine learning. The FPE can be regarded as a continuity equation where the change of the density is completely determined by a time varying velocity field. Importantly, this velocity field also depends on the current density function. As a result, the ground-truth velocity field can be shown to be the solution of a fixed-point equation, a property that we call self-consistency. In this paper, we exploit this concept to design a potential function of the hypothesis velocity fields, and prove that, if such a function diminishes to zero during the training procedure, the trajectory of the densities generated by the hypothesis velocity fields converges to the solution of the FPE in the Wasserstein-2 sense. The proposed potential function is amenable to neural-network based parameterization as the stochastic gradient with respect to the parameter can be efficiently computed. Once a parameterized model, such as Neural Ordinary Differential Equation is trained, we can generate the entire trajectory to the FPE.