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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >A generalized Fellner-Schall method for smoothing parameter optimization with application to Tweedie location, scale and shape models
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A generalized Fellner-Schall method for smoothing parameter optimization with application to Tweedie location, scale and shape models

机译:一种用于平滑参数优化的广义Fellant-Schall方法,应用于Tweedie位置,规模和形状模型

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摘要

We consider the optimization of smoothing parameters and variance components in models with a regular log likelihood subject to quadratic penalization of the model coefficients, via a generalization of the method of Fellner (1986) and Schall (1991). In particular: (i) we generalize the original method to the case of penalties that are linear in several smoothing parameters, thereby covering the important cases of tensor product and adaptive smoothers; (ii) we show why the method's steps increase the restricted marginal likelihood of the model, that it tends to converge faster than the EM algorithm, or obvious accelerations of this, and investigate its relation to Newton optimization; (iii) we generalize the method to any Fisher regular likelihood. The method represents a considerable simplification over existing methods of estimating smoothing parameters in the context of regular likelihoods, without sacrificing generality: for example, it is only necessary to compute with the same first and second derivatives of the log-likelihood required for coefficient estimation, and not with the third or fourth order derivatives required by alternative approaches. Examples are provided which would have been impossible or impractical with pre-existing Fellner-Schall methods, along with an example of a Tweedie location, scale and shape model which would be a challenge for alternative methods, and a sparse additive modeling example where the method facilitates computational efficiency gains of several orders of magnitude. This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
机译:我们考虑通过Feller(1986)和Schall(1991)的方法的泛化,通过常规日志似然考虑在模型中进行平滑参数和方差分量的优化模型中的模型。特别是:(i)我们将原始方法推广到几种平滑参数中是线性的惩罚的情况,从而涵盖了张量产品和适应性气体的重要情况; (ii)我们展示了为什么该方法的步骤增加了模型的限制性的边际可能性,即它倾向于比EM算法更快地收敛,或者明显加速,并调查其与牛顿优化的关系; (iii)我们将该方法概括为任何渔民定期的可能性。该方法表示在常规似然上估计平滑参数的现有方法的相当大的简化,而不牺牲一般性:例如,仅需要与系数估计所需的日志似然的相同的第一和第二导数来计算,而不是替代方法所需的第三个或第四阶衍生物。提供了实例,其与预先存在的Feller-Schall方法一起是不可能的或不切实际的,以及Tweedie位置,尺度和形状模型的示例,这对于替代方法是一种挑战,以及该方法的稀疏添加剂建模示例促进几个数量级的计算效率提升。这是在创意公约归因许可的条款下的开放式检修文章,其允许在任何媒体中使用,分发和再现,只要原始工作被正确引用。

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