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A note on predictive densities based on composite likelihood methods

机译:基于复合似然法的预测密度的注记

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Abstract Whenever the computation of data distribution is unfeasible or inconvenient, the classical predictive procedures prove not to be useful. These rely, after all, on the conditional distribution of the future random variable, which is also unavailable. This paper considers a notion of composite likelihood for specifying composite predictive distributions, viewed as surrogates for true unknown predictive distribution. In particular, the focus is on the pairwise likelihood obtained as a weighted product of likelihood factors related to bivariate events associated with both the sample data and future observation. The specification of the weights, and more generally the evaluation of the frequentist properties of alternative pairwise predictive distributions, is performed by considering the mean square prediction error of the associated predictors and the expected Kullback–Liebler loss of the related predictive densities. Finally, simple examples concerning autoregressive models are presented.
机译:摘要每当数据分布的计算不可行或不方便时,经典的预测程序都将被证明是无用的。毕竟,这些依赖于将来随机变量的条件分布,这也是不可用的。本文考虑了用于指定复合预测分布的复合可能性概念,该概念被视为对真正未知预测分布的替代。特别地,重点是作为与样本数据和未来观测值相关的双变量事件相关的似然因子的加权积而获得的成对似然。通过考虑相关预测变量的均方预测误差以及相关预测密度的预期Kullback-Liebler损失,可以进行权重的指定以及更一般的对成对预测分布的频繁性属性的评估。最后,给出了有关自回归模型的简单示例。

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