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首页> 外文期刊>Journal of the Japan Statistical Society >BAYESIAN MODEL AVERAGING AND BAYESIAN PREDICTIVE INFORMATION CRITERION FOR MODEL SELECTION
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BAYESIAN MODEL AVERAGING AND BAYESIAN PREDICTIVE INFORMATION CRITERION FOR MODEL SELECTION

机译:贝叶斯模型平均和贝叶斯模型选择的预测信息准则

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摘要

The problem of evaluating the goodness of the predictive distributions developed by the Bayesian model averaging approach is investigated. Considering the maximization of the posterior mean of the expected log-likelihood of the predictive distributions (Ando (2007a)), we develop the Bayesian predictive information criterion (BPIC). According to the numerical examples, we show that the posterior mean of the log-likelihood has a positive bias comparing with the posterior mean of the expected log-likelihood, and that the bias estimate of BPIC is close to the true bias. One of the advantages of BPIC is that we can optimize the size of Occam's razor. Monte Carlo simulation results show that the proposed method performs well.
机译:研究了评估由贝叶斯模型平均方法开发的预测分布的良好性的问题。考虑到预测分布的预期对数似然的后验均值的最大值(Ando(2007a)),我们开发了贝叶斯预测信息标准(BPIC)。根据数值示例,我们显示对数似然的后验均值与预期对数似然的后验均值相比具有正偏差,并且BPIC的偏差估计接近于真实偏差。 BPIC的优势之一是我们可以优化Occam剃刀的尺寸。蒙特卡罗仿真结果表明,该方法性能良好。

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