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Regularised rank quasi-likelihood estimation for generalised additive models

机译:广义添加剂模型的正则排名准似然估计

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Generalised additive models (GAMs) provide flexible models for a wide array of data sources. In the past, improvements of GAM estimation have focused on the smoothers used in the local scoring algorithm used for estimation, but poor prediction for non-Gaussian data motivates the need for robust estimation of GAMs. In this paper, rank-based estimation, as a robust and efficient alternative to the likelihood-based estimation of GAMs, is proposed. It is shown that rank GAM estimators can be obtained through iteratively reweighted likelihood-based GAM estimation which we call the iterated regularised rank quasi-likelihood (IRRQL). Simulation experiments support the use of rank-based GAM estimation for heavy-tailed or contaminated sources of data.
机译:广义添加剂模型(Gams)为广泛的数据源提供灵活的模型。 在过去,GAM估计的改进专注于用于估计的本地评分算法中使用的SmoOth,但对非高斯数据的预测不良激励了对GAM的稳健估计的需求。 在本文中,提出了基于秩的估计,作为GAMS的似然估计的稳健和有效的替代品。 结果表明,可以通过迭代重复的基于可能性的GAM估计来获得等级GAM估计,我们称之为迭代正则化等级准可能性(IRRQL)。 仿真实验支持使用基于秩的GAM估计的重型或污染的数据来源。

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