Many traditional signal recovery approaches can behave well basing on the penalized likelihood. However, they have to meet with the difficulty in the selection of hyperparameters or tuning parameters in the penalties. In this article, we propose a global adaptive generative adjustment (GAGA) algorithm for signal recovery, in which multiple hyperpameters are automatically learned and alternatively updated with the signal. We further prove that the output of our algorithm directly guarantees the consistency of model selection and signal estimate. Moreover, we also propose a variant GAGA algorithm for improving the computational efficiency in the high-dimensional data analysis. Finally, in the simulated experiment, we consider the consistency of the outputs of our algorithms, and compare our algorithms to other penalized likelihood methods: the Adaptive LASSO, the SCAD and the MCP. The simulation results support the efficiency of our algorithms for signal recovery, and demonstrate that our algorithms outperform the other algorithms.
翻译:许多传统的信号恢复方法可以基于受罚的可能性,但必须应对在选择超参数或调整处罚参数方面的困难。在本条中,我们提议为信号恢复采用一种全球适应性基因调整算法(GAGA)算法(GAGA),在这种算法中自动学习多个超光度计,并以该信号来更新。我们进一步证明我们的算法产出直接保证了模型选择和信号估计的一致性。此外,我们还提议了一个替代的GAGA算法,以提高高维数据分析的计算效率。最后,在模拟实验中,我们考虑了我们的算法产出的一致性,并将我们的算法与其他受罚的可能性方法(适应性LASSO、SCAD和MCP)进行比较。模拟结果支持了我们恢复信号的算法的效率,并证明我们的算法比其他算法要好。