Online and Distribution-Free Robustness: Regression and Contextual Bandits with Huber Contamination

被引:9
|
作者
Chen, Sitan [1 ]
Koehler, Frederic [1 ]
Moitra, Ankur [2 ]
Yau, Morris [2 ]
机构
[1] Univ Calif Berkeley, Berkeley, CA 94720 USA
[2] MIT, 77 Massachusetts Ave, Cambridge, MA 02139 USA
关键词
robust statistics; regression; contextual bandits; online learning; Huber contamination; ASYMPTOTICS;
D O I
10.1109/FOCS52979.2021.00072
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
In this work we revisit two classic high-dimensional online learning problems, namely linear regression and contextual bandits, from the perspective of adversarial robustness. Existing works in algorithmic robust statistics make strong distributional assumptions that ensure that the input data is evenly spread out or comes from a nice generative model. Is it possible to achieve strong robustness guarantees even without distributional assumptions altogether, where the sequence of tasks we are asked to solve is adaptively and adversarially chosen? We answer this question in the affirmative for both linear regression and contextual bandits. In fact our algorithms succeed where conventional methods fail. In particular we show strong lower bounds against Huber regression and more generally any convex M-estimator. Our approach is based on a novel alternating minimization scheme that interleaves ordinary least-squares with a simple convex program that finds the optimal reweighting of the distribution under a spectral constraint. Our results obtain essentially optimal dependence on the contamination level eta, reach the optimal breakdown point, and naturally apply to infinite dimensional settings where the feature vectors are represented implicitly via a kernel map.
引用
收藏
页码:684 / 695
页数:12
相关论文
共 50 条
  • [1] Contextual Bandits with Online Neural Regression
    Deb, Rohan
    Ban, Yikun
    Zuo, Shiliang
    He, Jingrui
    Banerjee, Arindam
    arXiv, 2023,
  • [2] Distribution-Free Contextual Dynamic Pricing
    Luo, Yiyun
    Sun, Will Wei
    Liu, Yufeng
    MATHEMATICS OF OPERATIONS RESEARCH, 2024, 49 (01) : 599 - 618
  • [3] Distribution-Free Predictive Inference for Regression
    Lei, Jing
    G'Sell, Max
    Rinaldo, Alessandro
    Tibshirani, Ryan J.
    Wasserman, Larry
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2018, 113 (523) : 1094 - 1111
  • [4] Distribution-free properties of isotonic regression
    Soloff, Jake A.
    Guntuboyina, Adityanand
    Pitman, Jim
    ELECTRONIC JOURNAL OF STATISTICS, 2019, 13 (02): : 3243 - 3253
  • [5] A DISTRIBUTION-FREE TEST FOR REGRESSION PARAMETERS
    DANIELS, HE
    ANNALS OF MATHEMATICAL STATISTICS, 1954, 25 (03): : 499 - 513
  • [6] Distribution-free testing in linear and parametric regression
    Khmaladze, Estate V.
    ANNALS OF THE INSTITUTE OF STATISTICAL MATHEMATICS, 2021, 73 (06) : 1063 - 1087
  • [7] ADAPTIVE DISTRIBUTION-FREE REGRESSION METHODS AND THEIR APPLICATIONS
    HOGG, RV
    RANDLES, RH
    TECHNOMETRICS, 1975, 17 (04) : 399 - 407
  • [8] Distribution-Free Location-Scale Regression
    Siegfried, Sandra
    Kook, Lucas
    Hothorn, Torsten
    AMERICAN STATISTICIAN, 2023, 77 (04): : 345 - 356
  • [9] DISTRIBUTION-FREE CONSISTENCY OF KERNEL REGRESSION ESTIMATE
    胡舒合
    Chinese Science Bulletin, 1990, (21) : 1841 - 1843
  • [10] DISTRIBUTION-FREE CONSISTENCY OF KERNEL REGRESSION ESTIMATE
    HU, SH
    CHINESE SCIENCE BULLETIN, 1990, 35 (21): : 1841 - 1843