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Conjugacy properties of time-evolving Dirichlet and gamma random measures

机译:随时间变化的狄利克雷和伽玛随机测度的共轭性质

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We extend classic characterisations of posterior distributions under Dirichlet process and gamma random measures priors to a dynamic framework. We consider the problem of learning, from indirect observations, two families of time-dependent processes of interest in Bayesian nonparametrics: the first is a dependent Dirichlet process driven by a Fleming–Viot model, and the data are random samples from the process state at discrete times; the second is a collection of dependent gamma random measures driven by a Dawson–Watanabe model, and the data are collected according to a Poisson point process with intensity given by the process state at discrete times. Both driving processes are diffusions taking values in the space of discrete measures whose support varies with time, and are stationary and reversible with respect to Dirichlet and gamma priors respectively. A common methodology is developed to obtain in closed form the time-marginal posteriors given past and present data. These are shown to belong to classes of finite mixtures of Dirichlet processes and gamma random measures for the two models respectively, yielding conjugacy of these classes to the type of data we consider. We provide explicit results on the parameters of the mixture components and on the mixing weights, which are time-varying and drive the mixtures towards the respective priors in absence of further data. Explicit algorithms are provided to recursively compute the parameters of the mixtures. Our results are based on the projective properties of the signals and on certain duality properties of their projections.
机译:我们在动态框架之前扩展了Dirichlet过程和γ随机度量下后验分布的经典特征。我们考虑从间接观察中学习贝叶斯非参数过程中的两个时变过程家族的问题:第一个是由Fleming-Viot模型驱动的从属Dirichlet过程,数据是过程状态下的随机样本离散时间;第二个是由Dawson-Watanabe模型驱动的相关伽玛随机测量的集合,数据是根据泊松点过程收集的,其强度由过程状态在离散时间给出。两种驱动过程都是在离散量度的空间中获取值的扩散,其支持随时间变化,并且相对于Dirichlet和伽玛先验是固定的和可逆的。开发了一种通用的方法,以封闭的形式获得过去和现在的数据后的时间边际后验。这些分别显示为属于两种模型的Dirichlet过程和伽玛随机测度的有限混合类,这些类与我们考虑的数据类型具有共轭性。我们提供了有关混合物成分参数和混合权重的明确结果,这些结果随时间变化,在没有更多数据的情况下将混合物推向各自的先验水平。提供了显式算法来递归计算混合物的参数。我们的结果基于信号的投影特性及其投影的某些对偶特性。

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