Many Machine Learning algorithms are formulated as regularized optimization problems, but their performance hinges on a regularization parameter that needs to be calibrated to each application at hand. In this paper, we propose a general calibration scheme for regularized optimization problems and apply it to the graphical lasso, which is a method for Gaussian graphical modeling. The scheme is equipped with theoretical guarantees and motivates a thresholding pipeline that can improve graph recovery. Moreover, requiring at most one line search over the regularization path, the calibration scheme is computationally more efficient than competing schemes that are based on resampling. Finally, we show in simulations that our approach can improve on the graph recovery of other approaches considerably.
翻译:许多机器学习算法被设计成正规化优化问题,但其性能取决于需要根据手头每个应用程序加以校准的正规化参数。 在本文中,我们提出了一个常规化优化问题的一般校准计划,并将其应用于图形套索,这是高斯图形建模的一种方法。该计划配备了理论保障,并激励了一条能够改进图形恢复的阈值管道。此外,在要求对正规化路径进行最多一行搜索时,校准计划比基于重新标注的竞争性计划在计算上效率更高。 最后,我们在模拟中显示,我们的方法可以在图表中大大改进其他方法的回收。