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A Bayesian lower bound for parameter estimation of Poisson data including multiple changes

机译:包含多个变化的泊松数据参数估计的贝叶斯下界

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This paper derives lower bounds for the mean square errors of parameter estimators in the case of Poisson distributed data subjected to multiple abrupt changes. Since both change locations (discrete parameters) and parameters of the Poisson distribution (continuous parameters) are unknown, it is appropriate to consider a mixed Cramér-Rao/Weiss-Weinstein bound for which we derive closed-form expressions and illustrate its tightness by numerical simulations.
机译:在泊松分布数据经历多次突变的情况下,本文推导了参数估计量均方误差的下界。由于变化位置(离散参数)和泊松分布参数(连续参数)都是未知的,因此考虑混合Cramér-Rao/ Weiss-Weinstein边界是合适的,我们可以导出封闭形式的表达式并通过数值说明其紧密性模拟。

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