Importance sampling (IS) and numerical integration methods are usually employed for approximating moments of complicated target distributions. In its basic procedure, the IS methodology randomly draws samples from a proposal distribution and weights them accordingly, accounting for the mismatch between the target and proposal. In this work, we present a general framework of numerical integration techniques inspired by the IS methodology. The framework can also be seen as an incorporation of deterministic rules into IS methods, reducing the error of the estimators by several orders of magnitude in several problems of interest. The proposed approach extends the range of applicability of the Gaussian quadrature rules. For instance, the IS perspective allows us to use Gauss-Hermite rules in problems where the integrand is not involving a Gaussian distribution, and even more, when the integrand can only be evaluated up to a normalizing constant, as it is usually the case in Bayesian inference. The novel perspective makes use of recent advances on the multiple IS (MIS) and adaptive (AIS) literatures, and incorporates it to a wider numerical integration framework that combines several numerical integration rules that can be iteratively adapted. We analyze the convergence of the algorithms and provide some representative examples showing the superiority of the proposed approach in terms of performance.
翻译:重要性抽样(IS)和数字集成方法通常用于接近复杂目标分布的近似时刻。在其基本程序中,基础设施服务方法随机地从一个建议分布中抽取样本,并相应地加权,考虑到目标与建议之间的不匹配。在这项工作中,我们提出了一个由指标服务方法启发的数字集成技术总体框架。这个框架还可以被视为将确定性规则纳入基础设施服务方法,在若干令人感兴趣的问题中通过几个数量级来减少估计性差的错误。拟议方法扩大了高斯方形规则的适用范围。例如,基础设施服务观点使我们能够在问题中使用高斯-赫米特规则,因为问题涉及的是目标与建议之间的不匹配;在这项工作中,我们提出一个总体集成的数值集成方法,在分析若干数字集成法时,我们用数字集成法分析了某些数字集成法,并用数字集成法分析了一些数字集成法,这样可以对数字集成法进行迭代数性分析。