论文标题
离散观察到扩散的取样的阻止的计算成本
The computational cost of blocking for sampling discretely observed diffusions
论文作者
论文摘要
对离散观察到的扩散进行贝叶斯推断的许多方法涉及在观测值之间进行扩散桥。这在计算上可能具有挑战性,因为由于观测距离增加,随后观察结果之间的时间视野很大,因此随后的观察结果很大。在实际设置中,使用阻止方案是常见的,其中路径被分为(用户指定的)重叠段数,并使用Gibbs采样器依次更新段。将扩散桥的独立仿真代替使用阻止的独立模拟引入了一个固有的权衡:我们现在以较短的桥梁为代价,而造成了桥梁采样器后续迭代之间的依赖性。有多种可能的方法可以实现阻止方案,这使这一事实更加复杂,每种方案都引入了迭代之间的不同依赖性结构。尽管阻止方案在实践中取得了很大的经验成功,但尚未对这种权衡的分析,也没有向从业人员提供有关特定规范的指导,这些规范应用于获得计算有效的实施。在本文中,我们进行了此分析,并证明了封闭的路径空间排斥采样器的预期计算成本以立方体速率相对于观察距离渐近地应用于布朗尼桥梁,并且在Ornstein-uhlenbeck过程的情况下,该速率是线性的。数值实验表明,除了考虑线性扩散类别之外,我们的论文的结果和指导的适用性既是适用性。
Many approaches for conducting Bayesian inference on discretely observed diffusions involve imputing diffusion bridges between observations. This can be computationally challenging in settings in which the temporal horizon between subsequent observations is large, due to the poor scaling of algorithms for simulating bridges as observation distance increases. It is common in practical settings to use a blocking scheme, in which the path is split into a (user-specified) number of overlapping segments and a Gibbs sampler is employed to update segments in turn. Substituting the independent simulation of diffusion bridges for one obtained using blocking introduces an inherent trade-off: we are now imputing shorter bridges at the cost of introducing a dependency between subsequent iterations of the bridge sampler. This is further complicated by the fact that there are a number of possible ways to implement the blocking scheme, each of which introduces a different dependency structure between iterations. Although blocking schemes have had considerable empirical success in practice, there has been no analysis of this trade-off nor guidance to practitioners on the particular specifications that should be used to obtain a computationally efficient implementation. In this article we conduct this analysis and demonstrate that the expected computational cost of a blocked path-space rejection sampler applied to Brownian bridges scales asymptotically at a cubic rate with respect to the observation distance and that this rate is linear in the case of the Ornstein-Uhlenbeck process. Numerical experiments suggest applicability both of the results of our paper and of the guidance we provide beyond the class of linear diffusions considered.