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Quickest change detection and Kullback-Leibler divergence for two-state hidden Markov models

机译:两种状态的隐马尔可夫模型的最快变化检测和Kullback-Leibler散度

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The quickest change detection problem is studied in two-state hidden Markov models (HMM), where the vector parameter θ of the HMM may change from θ to θ at some unknown time, and one wants to detect the true change as quickly as possible while controlling the false alarm rate. It turns out that the generalized likelihood ratio (GLR) scheme, while theoretically straightforward, is generally computationally infeasible for the HMM. To develop efficient but computationally simple schemes for the HMM, we first show that the recursive CUSUM scheme proposed in Fuh (Ann. Statist., 2003) can be regarded as a quasi-GLR scheme for some suitable pseudo post-change hypotheses. Next, we extend the quasi-GLR idea to propose recursive score schemes in a more complicated scenario when the post-change parameter θ of the HMM involves a real-valued nuisance parameter. Finally, our research provides an alternative approach that can numerically compute the Kullback-Leibler (KL) divergence of two-state HMMs via the invariant probability measure and the Fredholm integral equation.
机译:在状态隐马尔可夫模型(HMM)中研究了最快的变化检测问题,其中HMM的矢量参数θ可能在某个未知时间从θ变为θ,并且人们希望尽快检测到真实变化。控制误报率。事实证明,广义似然比(GLR)方案虽然理论上简单明了,但对于HMM通常在计算上是不可行的。为了为HMM开发高效但计算简单的方案,我们首先证明在Fuh(Ann。Statist。,2003)中提出的递归CUSUM方案对于某些合适的伪后变更假设可以被视为准GLR方案。接下来,当HMM的变更后参数θ包含实值的烦人参数时,我们将准GLR想法扩展为提出更复杂的方案的递归评分方案。最后,我们的研究提供了另一种方法,该方法可以通过不变概率测度和Fredholm积分方程来数值计算两个状态HMM的Kullback-Leibler(KL)发散。

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