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首页> 外文期刊>Communications in Statistics - Simulation and Computation >Inference for the Hyperparameters of Structural Models Under Classical and Bayesian Perspectives: A Comparison Study
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Inference for the Hyperparameters of Structural Models Under Classical and Bayesian Perspectives: A Comparison Study

机译:经典和贝叶斯视角下结构模型超参数的推论:比较研究

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Structural models—or dynamic linear models as they are known in the Bayesian literature—have been widely used to model and predict time series using a decomposition in non observable components. Due to the direct interpretation of the parameters, structural models are a powerful and simple methodology to analyze time series in several areas, such as economy, climatology, environmental sciences, among others. The parameters of such models can be estimated either using maximum likelihood or Bayesian procedures, generally implemented using conjugate priors, and there are plenty of works in the literature employing both methods. But are there situations where one of these approaches should be preferred? In this work, instead of conjugate priors for the hyperparameters, the Jeffreys prior is used in the Bayesian approach, along with the uniform prior, and the results are compared to the maximum likelihood method, in an extensive Monte Carlo study. Interval estimation is also evaluated and, to this purpose, bootstrap confidence intervals are introduced in the context of structural models and their performance is compared to the asymptotic and credibility intervals. A real time series of a Brazilian electric company is used as illustration.
机译:贝叶斯文献中已知的结构模型或动态线性模型已被广泛用于对不可观测分量进行分解来建模和预测时间序列。由于对参数的直接解释,结构模型是一种用于分析经济,气候学,环境科学等多个领域中的时间序列的强大而简单的方法。可以使用最大似然法或贝叶斯方法(通常使用共轭先验来实现)估计此类模型的参数,并且文献中有很多方法都采用了这两种方法。但是在某些情况下,应该首选其中一种方法吗?在这项工作中,代替了超参数的共轭先验,在广泛的蒙特卡洛研究中,将贝弗斯先验与统一先验一起用于贝叶斯方法,并将结果与​​最大似然法进行比较。还评估了间隔估计,并为此目的在结构模型的上下文中引入了自举置信区间,并将其性能与渐近和可信区间进行了比较。巴西电力公司的实时系列用作说明。

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