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Stochastic quasi-Newton methods for non-strongly convex problems: Convergence and rate analysis

机译:非强凸问题的随机拟牛顿法:收敛和速率分析

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Motivated by applications in optimization and machine learning, we consider stochastic quasi-Newton (SQN) methods for solving stochastic optimization problems. In the literature, the convergence analysis of these algorithms relies on strong convexity of the objective function. To our knowledge, no rate statements exist in the absence of this assumption. Motivated by this gap, we allow the objective function to be merely convex and develop a regularized SQN method. In this scheme, both the gradient mapping and the Hessian approximation are regularized at each iteration and updated alternatively. Unlike the classical regularization schemes, we allow the regularization parameter to be updated iteratively and decays to zero. Under suitable assumptions on the stepsize and regularization parameters, we show that the function value converges to its optimal value in both an almost sure and an expected-value sense. In each case, a set of regularization and steplength sequences is provided under which convergence may be guaranteed. Moreover, the rate of convergence is derived in terms of function value. Our empirical analysis on a binary classification problem shows that the proposed scheme performs well compared to both classical regularized SQN and stochastic approximation schemes.
机译:受优化和机器学习中应用程序的激励,我们考虑使用随机拟牛顿(SQN)方法来解决随机优化问题。在文献中,这些算法的收敛性分析依赖于目标函数的强凸性。据我们所知,在没有这种假设的情况下,不存在任何利率声明。受此差距的驱使,我们允许目标函数只是凸的,并开发出正规化的SQN方法。在此方案中,梯度映射和Hessian逼近均在每次迭代时进行正则化并交替更新。与经典正则化方案不同,我们允许正则化参数迭代更新并衰减为零。在适当的假设下,对步长和正则化参数,我们表明函数值在几乎确定和期望值的意义上均收敛至其最佳值。在每种情况下,都提供了一组正则化和步长序列,可以保证收敛。此外,收敛速度是根据函数值得出的。我们对二元分类问题的经验分析表明,与经典正则化SQN和随机逼近方案相比,该方案的性能都很好。

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