Towards Optimal Problem Dependent Generalization Error Bounds in Statistical Learning Theory

IF 16.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Accounts of Chemical Research Pub Date : 2024-01-19 DOI:10.1287/moor.2021.0076
Yunbei Xu, Assaf Zeevi
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Abstract

We study problem-dependent rates, that is, generalization errors that scale near-optimally with the variance, effective loss, or gradient norms evaluated at the “best hypothesis.” We introduce a principled framework dubbed “uniform localized convergence” and characterize sharp problem-dependent rates for central statistical learning problems. From a methodological viewpoint, our framework resolves several fundamental limitations of existing uniform convergence and localization analysis approaches. It also provides improvements and some level of unification in the study of localized complexities, one-sided uniform inequalities, and sample-based iterative algorithms. In the so-called “slow rate” regime, we provide the first (moment-penalized) estimator that achieves the optimal variance-dependent rate for general “rich” classes; we also establish an improved loss-dependent rate for standard empirical risk minimization. In the “fast rate” regime, we establish finite-sample, problem-dependent bounds that are comparable to precise asymptotics. In addition, we show that iterative algorithms such as gradient descent and first order expectation maximization can achieve optimal generalization error in several representative problems across the areas of nonconvex learning, stochastic optimization, and learning with missing data.Supplemental Material: The online appendix is available at https://doi.org/10.1287/moor.2021.0076 .
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在统计学习理论中实现与问题相关的最优泛化误差界限
我们研究的是与问题相关的收敛率,即与 "最佳假设 "评估的方差、有效损失或梯度规范近乎最佳地扩展的泛化误差。我们引入了一个被称为 "均匀局部收敛 "的原则性框架,并描述了中心统计学习问题的尖锐问题依赖率。从方法论的角度来看,我们的框架解决了现有均匀收敛和局部化分析方法的几个基本局限。它还在研究局部复杂性、单边均匀不等式和基于样本的迭代算法方面提供了改进和某种程度的统一。在所谓的 "慢速率 "机制中,我们提供了第一个(矩惩罚)估计器,它能实现一般 "富 "类的最优方差相关速率;我们还为标准经验风险最小化建立了改进的损失相关速率。在 "快速率 "机制中,我们建立了与问题相关的有限样本界限,这些界限可与精确渐近线相媲美。此外,我们还展示了梯度下降和一阶期望最大化等迭代算法可以在非凸学习、随机优化和缺失数据学习等领域的几个代表性问题中实现最优泛化误差:在线附录见 https://doi.org/10.1287/moor.2021.0076 。
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来源期刊
Accounts of Chemical Research
Accounts of Chemical Research 化学-化学综合
CiteScore
31.40
自引率
1.10%
发文量
312
审稿时长
2 months
期刊介绍: Accounts of Chemical Research presents short, concise and critical articles offering easy-to-read overviews of basic research and applications in all areas of chemistry and biochemistry. These short reviews focus on research from the author’s own laboratory and are designed to teach the reader about a research project. In addition, Accounts of Chemical Research publishes commentaries that give an informed opinion on a current research problem. Special Issues online are devoted to a single topic of unusual activity and significance. Accounts of Chemical Research replaces the traditional article abstract with an article "Conspectus." These entries synopsize the research affording the reader a closer look at the content and significance of an article. Through this provision of a more detailed description of the article contents, the Conspectus enhances the article's discoverability by search engines and the exposure for the research.
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