The performance of the conditional particle filter (CPF) with backward sampling is often impressive even with long data records. However, when the observations are weakly informative relative to the dynamic model, standard multinomial resampling is wasteful and backward sampling has limited effect. In particular, with time-discretised continuous-time path integral models, backward sampling degenerates in refined discretisations. We detail two conditional resampling strategies suitable for the weakly informative regime: the so-called `killing' resampling and the systematic resampling with mean partial order. To avoid the degeneracy issue of backward sampling, we introduce a generalisation that involves backward sampling with an auxiliary `bridging' CPF step, which is parameterised by a blocking sequence. We present practical tuning strategies for choosing an appropriate blocking. Our experiments demonstrate that the CPF with a suitable resampling and the developed `bridge backward sampling' can lead to substantial efficiency gains in the weakly informative regime.
翻译:使用后向取样的有条件粒子过滤器(CPF)的性能往往令人印象深刻,即使有长期的数据记录。然而,当观测与动态模型相比信息不全时,标准的多位取样是浪费性的,而后向取样效果有限。特别是,由于时间分解连续时间路径集成模型,后向采样在精细的离散中退化。我们详细介绍了两种适合于信息薄弱的管理制度的有条件采样策略:所谓的“杀菌”再采样和以中度部分顺序系统重新采样。为了避免后向采样的退化问题,我们引入了一种一般化做法,涉及后向采样,采用辅助的“操纵式”调试器步骤,以阻断序列为参数。我们提出了选择适当屏蔽的实用调整战略。我们的实验表明,具有适当重新采样功能的森林合作伙伴关系和开发的“斜斜斜偏取样”能够使信息薄弱的系统产生大量效率收益。