Learning outside the Black-Box: The pursuit of interpretable models

被引:0
|
作者
Crabbe, Jonathan [1 ]
Zhang, Yao [1 ]
Zame, William R. [2 ]
van der Schaar, Mihaela [1 ]
机构
[1] Univ Cambridge, Cambridge CB2 1TN, England
[2] Univ Calif Los Angeles, Los Angeles, CA 90024 USA
关键词
REPRESENTATION; REGRESSION;
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
Machine Learning has proved its ability to produce accurate models - but the deployment of these models outside the machine learning community has been hindered by the difficulties of interpreting these models. This paper proposes an algorithm that produces a continuous global interpretation of any given continuous black-box function. Our algorithm employs a variation of projection pursuit in which the ridge functions are chosen to be Meijer G-functions, rather than the usual polynomial splines. Because Meijer G-functions are differentiable in their parameters, we can "tune" the parameters of the representation by gradient descent; as a consequence, our algorithm is efficient. Using five familiar data sets from the UCI repository and two familiar machine learning algorithms, we demonstrate that our algorithm produces global interpretations that are both highly accurate and parsimonious (involve a small number of terms). Our interpretations permit easy understanding of the relative importance of features and feature interactions. Our interpretation algorithm represents a leap forward from the previous state of the art.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Causal Interpretations of Black-Box Models
    Zhao, Qingyuan
    Hastie, Trevor
    JOURNAL OF BUSINESS & ECONOMIC STATISTICS, 2021, 39 (01) : 272 - 281
  • [22] POSTER: Black-box and Target-specific Attack Against Interpretable Deep Learning Systems
    Abdukhamidov, Eldor
    Juraev, Firuz
    Abuhamad, Mohammed
    Abuhmed, Tamer
    ASIA CCS'22: PROCEEDINGS OF THE 2022 ACM ASIA CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2022, : 1216 - 1218
  • [23] Black-box learning of multigrid parameters
    Katrutsa, Alexandr
    Daulbaev, Talgat
    Oseledets, Ivan
    JOURNAL OF COMPUTATIONAL AND APPLIED MATHEMATICS, 2020, 368 (368)
  • [24] Black-box electronics and passive learning
    Hess, Karl
    PHYSICS TODAY, 2014, 67 (02) : 11 - 12
  • [25] Active Learning in Black-Box Settings
    Rubens, Neil
    Sheinman, Vera
    Tomioka, Ryota
    Sugiyama, Masashi
    AUSTRIAN JOURNAL OF STATISTICS, 2011, 40 (1-2) : 125 - 135
  • [26] AMEBA: An Adaptive Approach to the Black-Box Evasion of Machine Learning Models
    Calzavara, Stefano
    Cazzaro, Lorenzo
    Lucchese, Claudio
    ASIA CCS'21: PROCEEDINGS OF THE 2021 ACM ASIA CONFERENCE ON COMPUTER AND COMMUNICATIONS SECURITY, 2021, : 292 - 306
  • [27] Techniques to Improve Ecological Interpretability of Black-Box Machine Learning Models
    Welchowski, Thomas
    Maloney, Kelly O.
    Mitchell, Richard
    Schmid, Matthias
    JOURNAL OF AGRICULTURAL BIOLOGICAL AND ENVIRONMENTAL STATISTICS, 2022, 27 (01) : 175 - 197
  • [28] Interacting with Predictions: Visual Inspection of Black-box Machine Learning Models
    Krause, Josua
    Perer, Adam
    Ng, Kenney
    34TH ANNUAL CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS, CHI 2016, 2016, : 5686 - 5697
  • [29] Efficient Label Contamination Attacks Against Black-Box Learning Models
    Zhao, Mengchen
    An, Bo
    Gao, Wei
    Zhang, Teng
    PROCEEDINGS OF THE TWENTY-SIXTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 2017, : 3945 - 3951
  • [30] Improved Adversarial Attack against Black-box Machine Learning Models
    Xu, Jiahui
    Wang, Chen
    Li, Tingting
    Xiang, Fengtao
    2020 CHINESE AUTOMATION CONGRESS (CAC 2020), 2020, : 5907 - 5912