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Folded concave penalized sparse linear regression: sparsity statistical performance and algorithmic theory for local solutions

机译:折叠凹点惩罚稀疏线性回归:稀疏性统计性能和局部解的算法理论

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摘要

This paper concerns the folded concave penalized sparse linear regression (FCPSLR), a class of popular sparse recovery methods. Although FCPSLR yields desirable recovery performance when solved globally, computing a global solution is NP-complete. Despite some existing statistical performance analyses on local minimizers or on specific FCPSLR-based learning algorithms, it still remains open questions whether local solutions that are known to admit fully polynomial-time approximation schemes (FPTAS) may already be sufficient to ensure the statistical performance, and whether that statistical performance can be non-contingent on the specific designs of computing procedures. To address the questions, this paper presents the following threefold results: (i) Any local solution (stationary point) is a sparse estimator, under some conditions on the parameters of the folded concave penalties. (ii) Perhaps more importantly, any local solution satisfying a significant subspace second-order necessary condition (S3ONC), which is weaker than the second-order KKT condition, yields a bounded error in approximating the true parameter with high probability. In addition, if the minimal signal strength is sufficient, the S3ONC solution likely recovers the oracle solution. This result also explicates that the goal of improving the statistical performance is consistent with the optimization criteria of minimizing the suboptimality gap in solving the non-convex programming formulation of FCPSLR. (iii) We apply (ii) to the special case of FCPSLR with minimax concave penalty (MCP) and show that under the restricted eigenvalue condition, any S3ONC solution with a better objective value than the Lasso solution entails the strong oracle property. In addition, such a solution generates a model error (ME) comparable to the optimal but exponential-time sparse estimator given a sufficient sample size, while the worst-case ME is comparable to the Lasso in general. Furthermore, to guarantee the S3ONC admits FPTAS.
机译:本文涉及折叠凹痕罚稀疏线性回归(FCPSLR),这是一类流行的稀疏恢复方法。尽管在全球范围内解决问题时,FCPSLR会产生理想的恢复性能,但计算全局解决方案是NP完整的。尽管已对局部最小化器或基于特定FCPSLR的学习算法进行了一些现有的统计性能分析,但仍然存在一个悬而未决的问题,即是否已经接受了公认的多项式时间近似方案(FPTAS)的局部解决方案可能已经足以确保统计性能,统计性能是否可以取决于计算程序的特定设计。为了解决这些问题,本文提出了以下三个方面的结果:(i)在某些情况下,根据折叠凹面罚分的参数,任何局部解(平稳点)都是稀疏估计量。 (ii)也许更重要的是,任何满足重要子空间二阶必要条件(S 3 ONC)的局部解都比二阶KKT条件弱,它在逼近方程组时会产生有界误差。真实参数的可能性很高。另外,如果最小信号强度足够,则S 3 ONC解决方案可能会恢复Oracle解决方案。该结果还说明,改善统计性能的目标与在解决FCPSLR的非凸规划公式时最小化次优差距的优化标准相一致。 (iii)我们将(ii)应用于具有最小极大凹痕罚分(MCP)的FCPSLR的特殊情况,并证明在受限特征值条件下,任何S 3 ONC解具有比Lasso更好的客观价值解决方案需要强大的Oracle属性。此外,在给定足够大的样本量的情况下,这种解决方案会产生与最优但指数时间稀疏估计量可比的模型误差(ME),而最坏情况下的ME通常可与Lasso相比。此外,为确保S 3 ONC接受FPTAS。

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