The Mean Field Variational Bayes (MFVB) method is one of the most computationally efficient techniques for Bayesian inference. However, its use has been restricted to models with conjugate priors or those that require analytical calculations. This paper proposes a novel particle-based MFVB approach that greatly expands the applicability of the MFVB method. We establish the theoretical basis of the new method by leveraging the connection between Wasserstein gradient flows and Langevin diffusion dynamics, and demonstrate the effectiveness of this approach using Bayesian logistic regression, stochastic volatility, and deep neural networks.
翻译:均场变分贝叶斯(MFVB)方法是贝叶斯推断中计算效率最高的技术之一。然而,其使用范围仅限于具有共轭先验或需要进行解析计算的模型。本文提出了一种新的基于粒子的MFVB方法,极大地扩展了MFVB方法的适用性。我们通过利用Wasserstein梯度流和Langevin扩散动力学之间的联系来建立新方法的理论基础,并利用贝叶斯逻辑回归、随机波动和深度神经网络等方法验证了该方法的有效性。