We propose the tensorizing flow method for estimating high-dimensional probability density functions from the observed data. The method is based on tensor-train and flow-based generative modeling. Our method first efficiently constructs an approximate density in the tensor-train form via solving the tensor cores from a linear system based on the kernel density estimators of low-dimensional marginals. We then train a continuous-time flow model from this tensor-train density to the observed empirical distribution by performing a maximum likelihood estimation. The proposed method combines the optimization-less feature of the tensor-train with the flexibility of the flow-based generative models. Numerical results are included to demonstrate the performance of the proposed method.
翻译:我们从观测到的数据中提出用于估计高维概率密度函数的推导性流法。该方法基于抗拉力和以流动为基础的基因模型。我们的方法首先通过以低维边缘内核测点为基础的线性系统解析抗拉力核心,从而有效地构建了抗拉力阵列形式的大约密度。然后,我们通过进行最大可能性估计,将从这种抗拉力阵列密度到观察到的经验分布的连续时间流模型培训出来。拟议方法将无优化的抗拉力阵列特征与以流动为基础的基因模型的灵活性结合起来。纳入了数字结果,以显示拟议方法的性能。