Analytic Samplers and the Combinatorial Rejection Method

O. Bodini, Jérémie O. Lumbroso, N. Rolin
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引用次数: 11

Abstract

Boltzmann samplers, introduced by Duchon et al. in 2001, make it possible to uniformly draw approximate size objects from any class which can be specified through the symbolic method. This, through by evaluating the associated generating functions to obtain the correct branching probabilities. But these samplers require generating functions, in particular in the neighborhood of their sunglarity, which is a complex problem; they also require picking an appropriate tuning value to best control the size of generated objects. Although Pivoteau~\etal have brought a sweeping question to the first question, with the introduction of their Newton oracle, questions remain. By adapting the rejection method, a classical tool from the random, we show how to obtain a variant of the Boltzmann sampler framework, which is tolerant of approximation, even large ones. Our goal for this is twofold: this allows for exact sampling with approximate values; but this also allows much more flexibility in tuning samplers. For the class of simple trees, we will try to show how this could be used to more easily calibrate samplers.
解析采样器与组合拒绝法
由Duchon等人于2001年引入的Boltzmann采样器使得从任何可以通过符号方法指定的类中均匀地绘制近似大小的对象成为可能。这是通过计算相关的生成函数来获得正确的分支概率。但是这些采样器需要生成函数,特别是在它们的太阳亮度附近,这是一个复杂的问题;它们还需要选择适当的调优值来最好地控制生成对象的大小。虽然Pivoteau~\etal对第一个问题提出了一个全面的问题,但随着牛顿预言的引入,问题仍然存在。通过采用随机的经典工具拒绝方法,我们展示了如何获得玻尔兹曼采样器框架的一个变体,它可以容忍近似,甚至是大的近似。我们的目标是双重的:这允许使用近似值进行精确采样;但这也允许更大的灵活性调整采样器。对于简单树的类别,我们将尝试展示如何使用它来更容易地校准采样器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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