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Iterative Markov Chain Monte Carlo Computation of Reference Priors and Minimax Risk

机译:参考先验和极小极大风险的迭代马尔可夫链蒙特卡罗计算

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We present an iterative Markov chain Monte Carlo algorithm for computing reference priors and minimax risk for general parametric families. Our approach uses MCMC techniques based on the Blahut-Arimoto algorithm for computing channel capacity in information theory. We give a statistical analysis of the algorithm, bounding the number of samples required for the stochastic algorithm to closely approximate the deterministic algorithm in each iteration. Simulations are presented for several examples from exponential families. Although we focus on applications to reference priors and minimax risk, the methods and analysis we develop are applicable to a much broader class of optimization problems and iterative algorithms.
机译:我们提出了一种迭代马尔可夫链蒙特卡罗算法,用于计算参考先验和一般参数族的最小极大风险。我们的方法使用基于Blahut-Arimoto算法的MCMC技术来计算信息论中的信道容量。我们对该算法进行了统计分析,将随机算法所需的样本数限制为在每次迭代中近似逼近确定性算法。针对指数族的几个示例提供了仿真。尽管我们专注于参考先验和最小极大风险的应用,但是我们开发的方法和分析适用于更广泛的优化问题和迭代算法。

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