互反弹性网

Rahim Alhamzawi, Ahmed Alhamzawi, Himel Mallick
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引用次数: 0

摘要

摘要针对正则化和变量选择问题,提出了一种新的惩罚似然方法(互反弹性网)。我们的建议是基于一类新的互反惩罚函数,结合互反LASSO正则化和岭回归的优势。我们将倒易弹性网问题表述为增广数据上的等效倒易LASSO问题,便于直接利用倒易LASSO算法生成整个倒易弹性网解路径。结合岭回归和自适应加权互易LASSO正则化的优点,进一步提出了互易自适应弹性网。通过仿真算例和实际数据分析,与已发表的方法相比,这些方法在各种不同的场景下表现出令人满意的性能。最后,提出了利用Gibbs采样器求解互反弹性网和互反自适应弹性网模型的贝叶斯方法。关键词:互反lasso正则化变量选择lasso弹性网络贝叶斯分析披露声明通讯作者代表所有共同作者声明不存在利益冲突。
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The reciprocal elastic net
AbstractA new penalized likelihood method (reciprocal elastic net) is put forward for regularization and variable selection. Our proposal is based on a new class of reciprocal penalty functions, combining the strengths of the reciprocal LASSO regularization and ridge regression. We formulate the reciprocal elastic net problem as an equivalent reciprocal LASSO problem on augmented data, facilitating a direct utilization of the reciprocal LASSO algorithm to generate the entire reciprocal elastic net solution path. We further present the reciprocal adaptive elastic net, fusing the merits of ridge regression with the adaptively weighted reciprocal LASSO regularization. These methods, illustrated through simulated examples and real data analysis, demonstrate satisfactory performance in various diversified scenarios compared to published methods. Finally, we propose Bayesian methods to solve the reciprocal elastic net and reciprocal adaptive elastic net models using Gibbs samplers.Keywords: Reciprocal LASSOregularizationvariable SelectionLASSOelastic netBayesian analysis Disclosure statementOn behalf of all the co-authors, the corresponding author states that there is no conflict of interest.
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