Data-Driven Offline Decision-Making via Invariant Representation Learning

被引:0
|
作者
Qi, Han [1 ]
Su, Yi [1 ]
Kumar, Aviral [1 ]
Levine, Sergey [1 ]
机构
[1] Univ Calif Berkeley, Dept Elect Engn & Comp Sci, Berkeley, CA 94720 USA
关键词
MODEL;
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
The goal in offline data-driven decision-making is synthesize decisions that optimize a black-box utility function, using a previously-collected static dataset, with no active interaction. These problems appear in many forms: offline reinforcement learning (RL), where we must produce actions that optimize the long-term reward, bandits from logged data, where the goal is to determine the correct arm, and offline model-based optimization (MBO) problems, where we must find the optimal design provided access to only a static dataset. A key challenge in all these settings is distributional shift: when we optimize with respect to the input into a model trained from offline data, it is easy to produce an out-of-distribution (OOD) input that appears erroneously good. In contrast to prior approaches that utilize pessimism or conservatism to tackle this problem, in this paper, we formulate offline data-driven decision-making as domain adaptation, where the goal is to make accurate predictions for the value of optimized decisions ("target domain"), when training only on the dataset ("source domain"). This perspective leads to invariant objective models (IOM), our approach for addressing distributional shift by enforcing invariance between the learned representations of the training dataset and optimized decisions. In IOM, if the optimized decisions are too different from the training dataset, the representation will be forced to lose much of the information that distinguishes good designs from bad ones, making all choices seem mediocre. Critically, when the optimizer is aware of this representational tradeoff, it should choose not to stray too far from the training distribution, leading to a natural trade-off between distributional shift and learning performance.
引用
收藏
页数:12
相关论文
共 50 条
  • [1] Data-driven decision-making in the library
    Massis, Bruce
    NEW LIBRARY WORLD, 2016, 117 (1-2) : 131 - 134
  • [2] DATA-DRIVEN ASSESSMENT AND DECISION-MAKING
    CRAWFORD, SL
    FUNG, RM
    TSE, E
    EXPERT SYSTEMS IN ECONOMICS, BANKING AND MANAGEMENT, 1989, : 399 - 408
  • [3] Data-driven decision-making for equipment maintenance
    Ma, Zhiliang
    Ren, Yuan
    Xiang, Xinglei
    Turk, Ziga
    AUTOMATION IN CONSTRUCTION, 2020, 112
  • [4] On data-driven decision-making for quality education
    Kurilovas, Eugenijus
    COMPUTERS IN HUMAN BEHAVIOR, 2020, 107
  • [5] The Rapid Adoption of Data-Driven Decision-Making
    Brynjolfsson, Erik
    McElheran, Kristina
    AMERICAN ECONOMIC REVIEW, 2016, 106 (05): : 133 - 139
  • [6] Data-Driven Marketing: How Machine Learning will improve Decision-Making for Marketers
    Abakouy, Redouan
    En-Naimi, El Mokhtar
    El Haddadi, Anass
    Lotfi, Elaachak
    4TH INTERNATIONAL CONFERENCE ON SMART CITY APPLICATIONS (SCA' 19), 2019,
  • [7] Multimodal Data-Driven Reinforcement Learning for Operational Decision-Making in Industrial Processes
    Chenliang Liu
    Yalin Wang
    Chunhua Yang
    Weihua Gui
    IEEE/CAA Journal of Automatica Sinica, 2024, 11 (01) : 252 - 254
  • [8] Data-driven decision-making for lost circulation treatments: A machine learning approach
    Alkinani, Husam H.
    Al-Hameedi, Abo Taleb T.
    Dunn-Norman, Shari
    ENERGY AND AI, 2020, 2
  • [9] Multimodal Data-Driven Reinforcement Learning for Operational Decision-Making in Industrial Processes
    Liu, Chenliang
    Wang, Yalin
    Yang, Chunhua
    Gui, Weihua
    IEEE-CAA JOURNAL OF AUTOMATICA SINICA, 2024, 11 (01) : 252 - 254
  • [10] Elementary teachers' perceptions of data-driven decision-making
    Schelling, Natalie
    Rubenstein, Lisa DaVia
    EDUCATIONAL ASSESSMENT EVALUATION AND ACCOUNTABILITY, 2021, 33 (02) : 317 - 344