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Direct sampling with a step function

机译:使用阶跃函数直接采样

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摘要

Abstract The direct sampling method proposed by Walker et al. (JCGS 2011) can generate draws from weighted distributions possibly having intractable normalizing constants. The method may be of interest as a tool in situations which require drawing from an unfamiliar distribution. However, the original algorithm can have difficulty producing draws in some situations. The present work restricts attention to a univariate setting where the weight function and base distribution of the weighted target density meet certain criteria. Here, a variant of the direct sampler is proposed which uses a step function to approximate the density of a particular augmented random variable on which the method is based. Knots for the step function can be placed strategically to ensure the approximation is close to the underlying density. Variates may then be generated reliably while largely avoiding the need for manual tuning or rejections. A rejection sampler based on the step function allows exact draws to be generated from the target with lower rejection probability in exchange for increased computation. Several applications of the proposed sampler illustrate the method: generating draws from the Conway-Maxwell Poisson distribution, a Gibbs sampler which draws the dependence parameter in a random effects model with conditional autoregression structure, and a Gibbs sampler which draws the degrees-of-freedom parameter in a regression with t-distributed errors.
机译:摘要 Walker等人(JCGS 2011)提出的直接抽样方法可以从可能具有棘手归一化常数的加权分布中生成抽取。在需要从不熟悉的分布中绘制数据的情况下,该方法可能是一种工具。但是,在某些情况下,原始算法可能难以产生平局。本工作将注意力限制在加权目标密度的权函数和基分布满足特定准则的单变量设置上。在这里,提出了一种直接采样器的变体,它使用阶跃函数来近似该方法所基于的特定增强随机变量的密度。阶跃函数的结可以策略性地放置,以确保近似值接近基础密度。然后可以可靠地生成变量,同时在很大程度上避免手动调谐或剔除的需要。基于阶跃函数的拒绝采样器允许以较低的拒绝概率从目标生成精确的绘制,以换取增加的计算量。所提出的采样器的几个应用说明了该方法:从Conway-Maxwell Poisson分布生成绘制,在具有条件自回归结构的随机效应模型中绘制依赖参数的Gibbs采样器,以及在具有t分布误差的回归中绘制自由度参数的Gibbs采样器。

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