The paper presents a new perspective on the mixture of Dirichlet process model which allows the recovery of full and correct uncertainty quantification associated with the full model, even after having integrated out the random distribution function. The implication is that we can run a simple Markov chain Monte Carlo algorithm and subsequently return the original uncertainty which was removed from the integration. This also has the benefit of avoiding more complicated algorithms which do not perform the integration step. Numerous illustrations are presented.
翻译:本文从新的角度看待德里奇莱特进程模型的混合物,它使得即使在纳入了随机分配功能之后,仍能恢复与完整模型相关的完整和正确的不确定性量化,这意味着我们可以运行一个简单的Markov链, Monte Carlo 算法,然后返回从整合中去除的最初不确定性。这也有利于避免不执行整合步骤的更复杂的算法。提供了许多示例。