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Bayesian Consistency for Markov Models

机译:马尔可夫模型的贝叶斯一致性

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摘要

We consider sufficient conditions for Bayesian consistency of the transition density of time homogeneous Markov processes. To date, this remains somewhat of an open problem, due to the lack of suitable metrics with which to work. Standard metrics seem inadequate, even for simple autoregressive models. Current results derive from generalizations of the i.i.d. case and additionally require some non-trivial model assumptions. We propose suitable neighborhoods with which to work and derive sufficient, conditions' for posterior consistency which can be applied in general settings. We illustrate the applicability of our result with some examples; in particular, we apply our result to a general family of nonparametric time series models.
机译:我们为时间齐次马尔可夫过程的转移密度的贝叶斯一致性考虑了充分的条件。迄今为止,由于缺乏适用的度量标准,这仍然是一个未解决的问题。即使对于简单的自回归模型,标准指标似乎也不足够。当前结果来自i.i.d.的概括。情况,并且还需要一些非平凡的模型假设。我们提出了合适的社区,可以用来工作并获得足够的后验条件,这些条件可以在一般情况下应用。我们通过一些例子来说明我们的结果的适用性。特别是,我们将结果应用于一般的非参数时间序列模型系列。

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