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首页> 外文期刊>Australian & New Zealand journal of statistics >BAYESIAN HYPER-LASSOS WITH NON-CONVEX PENALIZATION
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BAYESIAN HYPER-LASSOS WITH NON-CONVEX PENALIZATION

机译:贝叶斯超凸非凸化

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The Lasso has sparked interest in the use of penalization of the log-likelihood for variable selection, as well as for shrinkage. We are particularly interested in the more-variables-fhan-observations case of characteristic importance for modern data. The Bayesian interpretation of the Lasso as the maximum a posteriori estimate of the regression coefficients, which have been given independent, double exponential prior distributions, is adopted. Generalizing this prior provides a family of hyper-Lasso penalty functions, which includes the quasi-Cauchy distribution of Johnstone and Silverman as a special case. The properties of this approach, including the oracle property, are explored, and an EM algorithm for inference in regression problems is described. The posterior is multi-modal, and we suggest a strategy of using a set of perfectly fitting random starting values to explore modes in different regions of the parameter space. Simulations show that our procedure provides significant improvements on a range of established procedures, and we provide an example from chemometrics.
机译:套索引起了人们对将对数似然性的惩罚用于变量选择和收缩的兴趣。我们对现代数据具有特别重要意义的“变量多”观测案例特别感兴趣。采用了套索的贝叶斯解释作为回归系数的最大后验估计,该估计已被给予独立的双指数先验分布。概括此先验可提供一类超套索罚函数,其中包括特例的Johnstone和Silverman的拟柯西分布。探索了该方法的属性,包括oracle属性,并描述了用于推断回归问题的EM算法。后验是多模式的,我们建议使用一组完全适合的随机起始值来探索参数空间不同区域中的模式的策略。模拟表明,我们的程序对一系列既定程序进行了重大改进,并提供了化学计量学的一个实例。

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