Smoothed Analysis of Online and Differentially Private Learning

被引:0
|
作者
Haghtalab, Nika [1 ]
Roughgarden, Tim [2 ]
Shetty, Abhishek [1 ]
机构
[1] Cornell Univ, Dept Comp Sci, Ithaca, NY 14853 USA
[2] Columbia Univ, New York, NY 10027 USA
关键词
ALGORITHMS;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Practical and pervasive needs for robustness and privacy in algorithms have inspired the design of online adversarial and differentially private learning algorithms. The primary quantity that characterizes learnability in these settings is the Littlestone dimension of the class of hypotheses [Alon et al., 2019, Ben-David et al., 2009]. This characterization is often interpreted as an impossibility result because classes such as linear thresholds and neural networks have infinite Littlestone dimension. In this paper, we apply the framework of smoothed analysis [Spielman and Teng, 2004], in which adversarially chosen inputs are perturbed slightly by nature. We show that fundamentally stronger regret and error guarantees are possible with smoothed adversaries than with worst-case adversaries. In particular, we obtain regret and privacy error bounds that depend only on the VC dimension and the bracketing number of a hypothesis class, and on the magnitudes of the perturbations.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] Differentially Private Distributed Online Learning
    Li, Chencheng
    Zhou, Pan
    Xiong, Li
    Wang, Qian
    Wang, Ting
    [J]. IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2018, 30 (08) : 1440 - 1453
  • [2] Online Sensitivity Optimization in Differentially Private Learning
    Galli, Filippo
    Palamidessi, Catuscia
    Cucinotta, Tommaso
    [J]. THIRTY-EIGHTH AAAI CONFERENCE ON ARTIFICIAL INTELLIGENCE, VOL 38 NO 11, 2024, : 12109 - 12117
  • [3] Differentially Private Online Active Learning with Applications to Anomaly Detection
    Ghassemi, Mohsen
    Sarwate, Anand D.
    Wright, Rebecca N.
    [J]. AISEC'16: PROCEEDINGS OF THE 2016 ACM WORKSHOP ON ARTIFICIAL INTELLIGENCE AND SECURITY, 2016, : 117 - 128
  • [4] Revisiting Smoothed Online Learning
    Zhang, Lijun
    Jiang, Wei
    Lu, Shiyin
    Yang, Tianbao
    [J]. ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021, 34
  • [5] Concentrated Differentially Private Federated Learning With Performance Analysis
    Hu, Rui
    Guo, Yuanxiong
    Gong, Yanmin
    [J]. IEEE OPEN JOURNAL OF THE COMPUTER SOCIETY, 2021, 2 : 276 - 289
  • [6] Differentially Private Online Submodular Minimization
    Cardoso, Adrian Rivera
    Cummings, Rachel
    [J]. 22ND INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS, VOL 89, 2019, 89
  • [7] Differentially Private Online Submodular Maximization
    Perez-Salazar, Sebastian
    Cummings, Rachel
    [J]. 24TH INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND STATISTICS (AISTATS), 2021, 130
  • [8] Practical differentially private online advertising
    Sun, Jie
    Zhao, Lingchen
    Liu, Zhuotao
    Li, Qi
    Deng, Xinhao
    Wang, Qian
    Jiang, Yong
    [J]. COMPUTERS & SECURITY, 2022, 112
  • [9] A Novel Differentially Private Online Learning Algorithm for Group Lasso in Big Data
    Li, Jinxia
    Lu, Liwei
    [J]. IET Information Security, 2024, 2024 (01)
  • [10] Differentially Private Distributed Learning
    Zhou, Yaqin
    Tang, Shaojie
    [J]. INFORMS JOURNAL ON COMPUTING, 2020, 32 (03) : 779 - 789