Robust empirical risk minimization via Newton’s method

IF 2 Q2 ECONOMICS
Eirini Ioannou, Muni Sreenivas Pydi, Po-Ling Loh
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引用次数: 0

Abstract

A new variant of Newton’s method for empirical risk minimization is studied, where at each iteration of the optimization algorithm, the gradient and Hessian of the objective function are replaced by robust estimators taken from existing literature on robust mean estimation for multivariate data. After proving a general theorem about the convergence of successive iterates to a small ball around the population-level minimizer, consequences of the theory in generalized linear models are studied when data are generated from Huber’s epsilon-contamination model and/or heavy-tailed distributions. An algorithm for obtaining robust Newton directions based on the conjugate gradient method is also proposed, which may be more appropriate for high-dimensional settings, and conjectures about the convergence of the resulting algorithm are offered. Compared to robust gradient descent, the proposed algorithm enjoys the faster rates of convergence for successive iterates often achieved by second-order algorithms for convex problems, i.e., quadratic convergence in a neighborhood of the optimum, with a stepsize that may be chosen adaptively via backtracking linesearch.
基于牛顿方法的鲁棒经验风险最小化
本文研究了牛顿经验风险最小化方法的一种新变体,在优化算法的每次迭代中,目标函数的梯度和Hessian被多变量数据鲁棒均值估计文献中的鲁棒估计量所取代。在证明了连续迭代收敛到一个小球的一般定理之后,当数据从Huber的epsilon-污染模型和/或重尾分布中生成时,研究了该理论在广义线性模型中的结果。提出了一种基于共轭梯度法的鲁棒牛顿方向求解算法,该算法更适用于高维环境,并对算法的收敛性进行了推测。与鲁棒梯度下降算法相比,该算法对连续迭代具有更快的收敛速度,即在最优邻域内的二次收敛,并且可以通过回溯线研究自适应地选择步长。
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来源期刊
CiteScore
3.10
自引率
10.50%
发文量
84
期刊介绍: Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.
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