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A comparative study of Monte Carlo methods for efficient evaluation of marginal likelihood

机译:有效评估边际可能性的蒙特卡洛方法的比较研究

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摘要

Strategic choices for efficient and accurate evaluation of marginal likelihoods by means of Monte Carlo simulation methods are studied for the case of highly non-elliptical posterior distributions. A comparative analysis is presented of possible advantages and limitations of different simulation techniques; of possible choices of candidate distributions and choices of target or warped target distributions; and finally of numerical standard errors. The importance of a robust and flexible estimation strategy is demonstrated where the complete posterior distribution is explored. Given an appropriately yet quickly tuned adaptive candidate, straightforward importance sampling provides a computationally efficient estimator of the marginal likelihood (and a reliable and easily computed corresponding numerical standard error) in the cases investigated, which include a non-linear regression model and a mixture GARCH model. Warping the posterior density can lead to a further gain in efficiency, but it is more important that the posterior kernel be appropriately wrapped by the candidate distribution than that it is warped.
机译:对于高度非椭圆后验分布的情况,研究了通过蒙特卡罗模拟方法有效,准确地评估边缘可能性的战略选择。对不同模拟技术可能的优点和局限性进行了比较分析;候选分布的可能选择以及目标分布或扭曲的目标分布的选择;最后是数字标准误差。在探究完整的后验分布的情况下,展示了稳健而灵活的估计策略的重要性。给定适当但快速调整的自适应候选者,简单的重要性抽样可在所研究的案例中提供边际可能性(以及可靠且易于计算的相应数值标准误差)的高效计算估计器,其中包括非线性回归模型和混合GARCH模型。使后部密度翘曲可以进一步提高效率,但是与后翘相比,由候选分布适当包裹后内核更加重要。

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