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Bayesian Estimation With Imprecise Likelihoods: Random Set Approach

机译:具有不精确可能性的贝叶斯估计:随机集方法

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摘要

In many practical applications of statistical signal processing, the likelihood functions are only partially known. The measurement model in this case is affected by two sources of uncertainty: stochastic uncertainty and imprecision. Following the framework of random set theory , the paper presents the optimal Bayesian estimator for this problem. The resulting Bayes estimator in general has no analytic closed form solution, but can be approximated, for example, using the Monte Carlo method. A numerical example is included to illustrate the theory.
机译:在统计信号处理的许多实际应用中,似然函数仅是部分已知的。在这种情况下,测量模型受两个不确定性因素的影响:随机不确定性和不精确性。遵循随机集理论的框架,本文提出了针对该问题的最优贝叶斯估计。所得的贝叶斯估计器通常没有解析的闭合形式解,但是可以使用例如蒙特卡洛方法进行近似。包含一个数值示例来说明该理论。

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