Nested sampling (NS) computes parameter posterior distributions and makes Bayesian model comparison computationally feasible. Its strengths are the unsupervised navigation of complex, potentially multi-modal posteriors until a well-defined termination point. A systematic literature review of nested sampling algorithms and variants is presented. We focus on complete algorithms, including solutions to likelihood-restricted prior sampling. A new formulation of NS is presented, which casts the parameter space exploration as a search on a tree. Previously published ways of obtaining robust error estimates and dynamic variations of the number of live points are presented as special cases of this formulation.
翻译:内嵌抽样(NS)计算了参数后座分布,使贝耶斯模型的比较在计算上具有可行性,其优点是在明确界定的终止点之前不受监督地对复杂、可能多模式的后座山脉进行导航;对嵌套抽样算法和变异物进行了系统的文献审查;我们侧重于完整的算法,包括解决在先前取样时受限制的可能性的办法;提出了新的NS配方,将参数空间探索作为一棵树的搜索;以前公布的获得稳健的误差估计和活点数动态变异的方法是这种配方的特殊例子。