Precision annealing Monte Carlo methods for statistical data assimilation and machine learning

被引:0
|
作者
Fang, Zheng [1 ]
Wong, Adrian S. [1 ]
Hao, Kangbo [1 ]
Ty, Alexander J. A. [1 ]
Abarbanel, Henry D., I [1 ,2 ]
机构
[1] Univ Calif San Diego, Dept Phys, La Jolla, CA 92093 USA
[2] Univ Calif San Diego, Marine Phys Lab, Scripps Inst Oceanog, La Jolla, CA 92093 USA
来源
PHYSICAL REVIEW RESEARCH | 2020年 / 2卷 / 01期
关键词
MARKOV-CHAINS; CONVERGENCE; SYSTEM; STATE;
D O I
10.1103/PhysRevResearch.2.013050
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
In statistical data assimilation (SDA) and supervised machine learning (ML), we wish to transfer information from observations to a model of the processes underlying those observations. For SDA, the model consists of a set of differential equations that describe the dynamics of a physical system. For ML, the model is usually constructed using other strategies. In this paper, we develop a systematic formulation based on Monte Carlo sampling to achieve such information transfer. Following the derivation of an appropriate target distribution, we present the formulation based on the standard Metropolis-Hasting (MH) procedure and the Hamiltonian Monte Carlo (HMC) method for performing the high-dimensional integrals that appear. To the extensive literature on MH and HMC, we add (1) an annealing method using a hyperparameter that governs the precision of the model to identify and explore the highest probability regions of phase space dominating those integrals, and (2) a strategy for initializing the state-space search. The efficacy of the proposed formulation is demonstrated using a nonlinear dynamical model with chaotic solutions widely used in geophysics.
引用
收藏
页数:19
相关论文
共 50 条
  • [1] Machine Learning: Deepest Learning as Statistical Data Assimilation Problems
    Abarbanel, Henry D., I
    Rozdeba, Paul J.
    Shirman, Sasha
    NEURAL COMPUTATION, 2018, 30 (08) : 2025 - 2055
  • [2] MONTE CARLO METHODS - METHODS STATISTICAL TESTING/MONTE CARLO METHOD
    MULLER, ME
    ANNALS OF MATHEMATICAL STATISTICS, 1966, 37 (02): : 532 - &
  • [3] Data Assimilation Using Sequential Monte Carlo Methods in Wildfire Spread Simulation
    Xue, Haidong
    Gu, Feng
    Hu, Xiaolin
    ACM TRANSACTIONS ON MODELING AND COMPUTER SIMULATION, 2012, 22 (04):
  • [4] A comparison of deep machine learning and Monte Carlo methods for facies classification from seismic data
    Grana, Dario
    Azevedo, Leonardo
    Liu, Mingliang
    GEOPHYSICS, 2020, 85 (04) : WA41 - WA52
  • [5] Bayesian statistical data assimilation for ecosystem models using Markov Chain Monte Carlo
    Dowd, Michael
    JOURNAL OF MARINE SYSTEMS, 2007, 68 (3-4) : 439 - 456
  • [6] The effectiveness of machine learning methods in the nonlinear coupled data assimilation
    Xuan, Zi-ying
    Zheng, Fei
    Zhu, Jiang
    GEOSCIENCE LETTERS, 2024, 11 (01):
  • [7] A quasi-Monte Carlo data compression algorithm for machine learning
    Dick, Josef
    Feischl, Michael
    JOURNAL OF COMPLEXITY, 2021, 67
  • [8] METHODS OF STATISTICAL TESTING - MONTE CARLO METHOD
    MULLER, ME
    TECHNOMETRICS, 1965, 7 (04) : 659 - &
  • [9] Applications of Monte Carlo methods to statistical physics
    Binder, K
    REPORTS ON PROGRESS IN PHYSICS, 1997, 60 (05) : 487 - 559
  • [10] Monte Carlo methods in classical statistical physics
    Janke, Wolfhard
    COMPUTATIONAL MANY-PARTICLE PHYSICS, 2008, 739 : 79 - 140