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The geometric combination of Bayesian forecasting models

机译:贝叶斯预测模型的几何组合

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A nonlinear geometric combination of statistical models is proposed as an alternative approach to the usual linear combination or mixture. Contrary to the linear, the geometric model is closed under the regular exponential family of distributions, as we show. As a consequence, the distribution which results from the combination is unimodal and a single location parameter can be chosen for decision making. In the case of Student t-distributions (of particular interest in forecasting) the geometric combination can be unimodal under a sufficient condition we have established. A comparative analysis between the geometric and linear combinations of predictive distributions from three Bayesian regression dynamic linear models, in a case of beer sales forecasting in Zimbabwe, shows the geometric model to consistently outperform its linear counterpart as well as its component models. Copyright (C) 2008 John Wiley & Sons, Ltd.
机译:建议使用统计模型的非线性几何组合作为通常的线性组合或混合的替代方法。与线性相反,几何模型在正则指数分布族下是封闭的,如我们所示。结果,由组合产生的分布是单峰的,并且可以选择单个位置参数进行决策。对于学生t分布(在预测中特别感兴趣),在我们建立的充分条件下,几何组合可以是单峰的。在津巴布韦啤酒销售预测的情况下,对来自三个贝叶斯回归动态线性模型的预测分布的几何和线性组合进行的比较分析显示,几何模型始终优于线性模型及其组成模型。版权所有(C)2008 John Wiley&Sons,Ltd.

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