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Bayesian Grouped Horseshoe Regression with Application to Additive Models

机译:贝叶斯分组的马蹄回归与应用到附加模型

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The Bayesian horseshoe estimator is known for its robustness when handling noisy and sparse big data problems. This paper presents two extensions of the regular Bayesian horseshoe: (i) the grouped Bayesian horseshoe and (ii) the hierarchical Bayesian grouped horseshoe. The advantages of the proposed methods are their flexibility in handling grouped variables through extra shrinkage parameters at the group and within-group levels. We apply the proposed methods to the important class of additive models where group structures naturally exist, and we demonstrate that the grouped hierarchical Bayesian horseshoe has promising performance on both simulated and real data.
机译:在处理嘈杂和稀疏的大数据问题时,贝叶斯马蹄形估计器以其鲁棒性而闻名。本文介绍了普通贝叶斯马蹄铁的两个扩展:(i)分组​​的贝叶斯马蹄铁和(ii)分层贝叶斯群体的马蹄铁。所提出的方法的优点是它们通过额外收缩参数在组和组内级别来处理分组变量的灵活性。我们将建议的方法应用于重要的添加剂模型,其中基团结构自然存在,我们证明分组的等级贝叶斯马蹄铁对模拟和真实数据具有有希望的性能。

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