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Adaptive rejection Metropolis sampling using Lagrange interpolation polynomials of degree 2

机译:使用2级Lagrange插值多项式的自适应拒绝都会采样

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A crucial problem in Bayesian posterior computation is efficient sampling from a univariate distribution, e.g. a full conditional distribution in applications of the Gibbs sampler. This full conditional distribution is usually non-conjugate, algebraically complex and computationally expensive to evaluate. We propose an alternative algorithm, called ARMS2, to the widely used adaptive rejection sampling technique ARS [Gilks, W.R., Wild, P., 1992. Adaptive rejection sampling for Gibbs sampling. Applied Statistics 41 (2), 337–348; Gilks, W.R., 1992. Derivative-free adaptive rejection sampling for Gibbs sampling. In: Bernardo, J.M., Berger, J.O., Dawid, A.P., Smith, A.F.M. (Eds.), Bayesian Statistics, Vol. 4. Clarendon, Oxford, pp. 641–649] for generating a sample from univariate log-concave densities. Whereas ARS is based on sampling from piecewise exponentials, the new algorithm uses truncated normal distributions and makes use of a clever auxiliary variable technique [Damien, P., Walker, S.G., 2001. Sampling truncated normal, beta, and gamma densities. Journal of Computational and Graphical Statistics 10 (2) 206–215]. Furthermore, we extend this algorithm to deal with non-log-concave densities to provide an enhanced alternative to adaptive rejection Metropolis sampling, ARMS [Gilks, W.R., Best, N.G., Tan, K.K.C., 1995. Adaptive rejection Metropolis sampling within Gibbs sampling. Applied Statistics 44, 455–472]. The performance of ARMS and ARMS2 is compared in simulations of standard univariate distributions as well as in Gibbs sampling of a Bayesian hierarchical state-space model used for fisheries stock assessment.
机译:贝叶斯后验计算中的一个关键问题是从单变量分布中进行有效采样,例如Gibbs采样器在应用程序中的完整条件分布。这种完整的条件分布通常是非共轭的,代数复杂的并且计算成本很高。对于广泛使用的自适应拒绝采样技术ARS [Gilks​​,W.R.,Wild,P.,1992。Gibbs采样的自适应拒绝采样],我们提出了一种称为ARMS2的替代算法。应用统计41(2),337-348; Gilks​​,W.R.,1992年。Gibbs采样的无导数自适应抑制采样。在:伯纳多,J.M.,伯杰,J.O.,达维德,A.P.,史密斯,A.F.M. (编),贝叶斯统计,第一卷。 [4. Clarendon,牛津,第641–649页],用于从单变量对数凹面密度生成样本。尽管ARS是基于分段指数采样的,但新算法使用了截断的正态分布并利用了巧妙的辅助变量技术[Damien,P.,Walker,S.G.,2001。对截断的正态,β和伽马密度进行采样。计算与图形统计学报10(2)206–215]。此外,我们扩展了该算法以处理非对数凹面密度,从而为自适应抑制都市采样ARMS [Gilks​​,W.R.,Best,N.G.,Tan,K.K.C.,1995.吉布斯采样中的自适应排斥都市采样提供了增强的替代方法。应用统计44,455–472]。在标准单变量分布的模拟以及用于渔业种群评估的贝叶斯分层状态空间模型的吉布斯采样中,比较了ARMS和ARMS2的性能。

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