Variational Bayes methods are a scalable estimation approach for many complex state space models. However, existing methods exhibit a trade-off between accurate estimation and computational efficiency. This paper proposes a variational approximation that mitigates this trade-off. This approximation is based on importance densities that have been proposed in the context of efficient importance sampling. By directly conditioning on the observed data, the proposed method produces an accurate approximation to the exact posterior distribution. Because the steps required for its calibration are computationally efficient, the approach is faster than existing variational Bayes methods. The proposed method can be applied to any state space model that has a closed-form measurement density function and a state transition distribution that belongs to the exponential family of distributions. We illustrate the method in numerical experiments with stochastic volatility models and a macroeconomic empirical application using a high-dimensional state space model.
翻译:对许多复杂的国家空间模型来说,变式贝亚斯方法是一种可调整的估计方法。但是,现有方法在精确估计和计算效率之间显示出一种权衡。本文件建议采用一个可减轻这种权衡的变式近似值。这一近似值是基于高效重要性抽样中所提出的重要性密度。通过直接调整观察到的数据,拟议方法得出精确近似值以精确的后方分布。由于其校准所需的步骤是计算效率高的,因此该方法比现有的变式贝亚斯方法要快。拟议方法可以适用于具有封闭式测量密度函数和属于分布分布成倍式组合的状态过渡分布的州空间模型。我们用高维度空间模型来说明数字实验方法,并用高维度空间模型进行宏观经济实验应用。