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Improved monotone polynomial fitting with applications and variable selection

机译:具有应用程序和变量选择的改进的单调多项式拟合

摘要

We investigate existing and new isotonic parameterisations for monotone polynomials, the latter which have been previously unconsidered in the statistical literature. We show that this new parameterisation is faster and more flexible than its alternatives enabling polynomials to be constrained to be monotone over either a compact interval or a semi-compact interval of the form [a;∞), in addition to over the whole real line. Due to the speed and efficiency of algorithms based on our new parameterisation the use of standard bootstrap methodology becomes feasible. ududWe investigate the use of the bootstrap under monotonicity constraints to obtain confidence and prediction bands for the fitted curves and show that an adjustment by using either the ‘m out of n’ bootstrap or a post hoc symmetrisation of the confidence bands is necessary to achieve more uniform coverage probabilities. However, the same such adjustments appear unwarranted for prediction bands. ududFurthermore, we examine the model selection problem, not only for monotone polynomials, but also in a general sense, with a focus on graphical methods. Specifically, we describe how to visualize measures of description loss and of model complexity to facilitate the model selection problem. We advocate the use of the bootstrap to assess the stability of selected models and to enhance our graphical tools and demonstrate which variables are important using variable inclusion plots, showing that these can be invaluable plots for the model building process. We also describe methods for using the ‘m out of n’ bootstrap to select the degree of the fitted monotone polynomial and demonstrate it’s effectiveness in the specific constrained regression scenario.ududWe demonstrate the effectiveness of all of these methods using numerous case studies, which highlight the necessity and usefulness of our techniques.udAll algorithms discussed in this thesis are available in the R package MonoPoly (version 0.3-6 or later).
机译:我们研究了单调多项式的现有等渗参数化和新的等渗参数化,后者在统计文献中以前尚未考虑。我们表明,这种新的参数化方法比其替代方法更快,更灵活,除了在整个实线上,还可以在[a;∞)形式的紧凑区间或半紧凑区间内将多项式约束为单调。由于基于我们新参数化的算法的速度和效率,使用标准引导程序方法变得可行。 ud ud我们研究了在单调约束下使用引导程序以获得拟合曲线的置信度和预测带的情况,并表明需要通过使用'm out of n'引导程序或事后对称化置信带进行调整以实现更统一的覆盖率。但是,对于预测波段,同样的调整似乎是不必要的。 ud ud此外,我们不仅针对单调多项式,而且从一般意义上来说,也针对模型方法,研究了模型选择问题。具体来说,我们描述了如何可视化描述损失和模型复杂性的度量以促进模型选择问题。我们提倡使用引导程序来评估所选模型的稳定性并增强我们的图形工具,并使用变量包含图来说明哪些变量很重要,表明这些变量对于模型构建过程可能是无价的图。我们还描述了使用'm of n'引导程序来选择拟合单调多项式的次数的方法,并证明了其在特定约束回归方案中的有效性。 ud ud我们通过大量案例研究来证明所有这些方法的有效性 ud本文中讨论的所有算法都可以在R软件包MonoPoly(0.3-6版或更高版本)中找到。

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    Murray Kevin;

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  • 年度 2015
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