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Negotiating multicollinearity with spike-and-slab priors

机译:与先验先验协商多重共线性

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摘要

In multiple regression under the normal linear model, the presence of multicollinearity is well known to lead to unreliable and unstable maximum likelihood estimates. This can be particularly troublesome for the problem of variable selection where it becomes more difficult to distinguish between subset models. Here we show how adding a spike-and-slab prior mitigates this difficulty by filtering the likelihood surface into a posterior distribution that allocates the relevant likelihood information to each of the subset model modes. For identification of promising high posterior models in this setting, we consider three EM algorithms, the fast closed form EMVS version of Rockova and George (J Am Stat Assoc, 2014) and two new versions designed for variants of the spike-and-slab formulation. For a multimodal posterior under multicollinearity, we compare the regions of convergence of these three algorithms. Deterministic annealing versions of the EMVS algorithm are seen to substantially mitigate this multimodality. A single simple running example is used for illustration throughout.
机译:在正常线性模型下的多元回归中,众所周知多重共线性会导致不可靠且不稳定的最大似然估计。这对于变量选择问题尤其麻烦,因为在变量选择中很难区分子集模型。在这里,我们展示了如何通过将似然表面过滤到后验分布中(将后继分布分配给每个子集模型模式相关的似然信息)来添加尖峰板坯减轻了这一困难。为了在这种情况下确定有前途的高后验模型,我们考虑了三种EM算法,即Rockova和George的快速封闭形式EMVS版本(J Am Stat Assoc,2014年)和两个针对尖峰和平板配方的变体设计的新版本。对于多重共线性下的多峰后验,我们比较了这三种算法的收敛区域。 EMVS算法的确定性退火版本被认为可以大大缓解这种多模态。整个示例都使用一个简单的运行示例进行说明。

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