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Stochastic Variational Inference with Gradient Linearization

机译:具有梯度线性化的随机变分推论

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Variational inference has experienced a recent surge in popularity owing to stochastic approaches, which have yielded practical tools for a wide range of model classes. A key benefit is that stochastic variational inference obviates the tedious process of deriving analytical expressions for closed-form variable updates. Instead, one simply needs to derive the gradient of the log-posterior, which is often much easier. Yet for certain model classes, the log-posterior itself is difficult to optimize using standard gradient techniques. One such example are random field models, where optimization based on gradient linearization has proven popular, since it speeds up convergence significantly and can avoid poor local optima. In this paper we propose stochastic variational inference with gradient linearization (SVIGL). It is similarly convenient as standard stochastic variational inference - all that is required is a local linearization of the energy gradient. Its benefit over stochastic variational inference with conventional gradient methods is a clear improvement in convergence speed, while yielding comparable or even better variational approximations in terms of KL divergence. We demonstrate the benefits of SVIGL in three applications: Optical flow estimation, Poisson-Gaussian denoising, and 3D surface reconstruction.
机译:由于随机方法,变分推论已经经历了最近的普及浪涌,因此由于各种型号级别产生了实用的工具。关键益处是随机变分推理消除了导出用于闭合变量更新的分析表达式的繁琐过程。相反,一个只需要导出日志后部的梯度,这通常更容易。然而对于某些模型类,难以使用标准梯度技术优化日志后部。一个这样的示例是随机场模型,其中基于梯度线性化的优化已经被证明是流行的,因为它显着加速了收敛,可以避免差的本地Optima。在本文中,我们提出了具有梯度线性化(SVIG1)的随机变分推理。它类似于标准随机变分推理 - 所需的所有内容是能量梯度的局部线性化。其利益与传统梯度方法的随机变分推论是收敛速度的明显改善,同时在KL发散方面产生可比或甚至更好的变分近似。我们展示了SVIGL在三种应用中的好处:光学流量估计,泊松 - 高斯去噪和3D表面重建。

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