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Stochastic proximal-gradient algorithms for penalized mixed models

机译:惩罚混合模型的随机近邻梯度算法

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摘要

Motivated by penalized likelihood maximization in complex models, we study optimization problems where neither the function to optimize nor its gradient has an explicit expression, but its gradient can be approximated by a Monte Carlo technique. We propose a new algorithm based on a stochastic approximation of the proximal-gradient (PG) algorithm. This new algorithm, named stochastic approximation PG (SAPG) is the combination of a stochastic gradient descent step whichroughly speakingcomputes a smoothed approximation of the gradient along the iterations, and a proximal step. The choice of the step size and of the Monte Carlo batch size for the stochastic gradient descent step in SAPG is discussed. Our convergence results cover the cases of biased and unbiased Monte Carlo approximations. While the convergence analysis of some classical Monte Carlo approximation of the gradient is already addressed in the literature (see Atchade etal. in J Mach Learn Res 18(10):1-33, 2017), the convergence analysis of SAPG is new. Practical implementation is discussed, and guidelines to tune the algorithm are given. The two algorithms are compared on a linear mixed effect model as a toy example. A more challenging application is proposed on nonlinear mixed effect models in high dimension with a pharmacokinetic data set including genomic covariates. To our best knowledge, our work provides the first convergence result of a numerical method designed to solve penalized maximum likelihood in a nonlinear mixed effect model.
机译:受复杂模型中惩罚似然最大化的影响,我们研究了优化问题,其中优化函数或其梯度均未明确表示,但其梯度可通过蒙特卡洛技术进行近似。我们提出了一种基于近端梯度(PG)算法的随机近似的新算法。这种称为随机逼近PG(SAPG)的新算法是随机梯度下降步骤和近端步骤的组合,该步骤大致计算了梯度在迭代过程中的平滑逼近。讨论了SAPG中随机梯度下降步骤的步长和蒙特卡洛批量大小的选择。我们的收敛结果涵盖了有偏和无偏蒙特卡洛近似的情况。虽然文献中已经解决了一些经典的梯度蒙特卡罗近似的收敛性分析(请参阅Atchade等人在J Mach Learn Res 18(10):1-33,2017),但SAPG的收敛性分析是新的。讨论了实际的实现,并给出了调整算法的指南。将这两种算法在线性混合效果模型上进行比较,以此作为一个玩具示例。提出了一个更具挑战性的应用,它涉及具有基因组协变量的药代动力学数据集,在高维非线性混合效应模型上具有很高的应用价值。据我们所知,我们的工作提供了一种数值方法的首次收敛结果,该方法旨在解决非线性混合效应模型中的惩罚最大似然。

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