We introduce the arbitrary rectangle-range generalized elastic net penalty method, abbreviated to ARGEN, for performing constrained variable selection and regularization in high-dimensional sparse linear models. As a natural extension of the nonnegative elastic net penalty method, ARGEN is proved to have variable selection consistency and estimation consistency under some conditions. The asymptotic behavior in distribution of the ARGEN estimators have been studied. We also propose an algorithm called MU-QP-RR-W-$l_1$ to efficiently solve ARGEN. By conducting simulation study we show that ARGEN outperforms the elastic net in a number of settings. Finally an application of S&P 500 index tracking with constraints on the stock allocations is performed to provide general guidance for adapting ARGEN to solve real-world problems.
翻译:我们引入了任意矩形一般弹性网惩罚方法,该方法被缩写为ARGEN,用于在高维分散线性模型中进行有限的变量选择和正规化。作为非负弹性网惩罚方法的自然延伸,ARCEN在某些条件下被证明具有不同的选择一致性和估计一致性。研究了分配ARGEN估测器中的无刺激行为。我们还提出了一种算法,称为MU-QP-RR-W-$l_1美元,以有效解决ARGEN。我们通过进行模拟研究,表明ARCEN在许多环境中超过了弹性网。最后,应用S&P 500指数追踪对股票分配的限制,为调整ARGEN以解决现实世界问题提供了一般指导。