Literature DB >> 31130740

Manifold learning for parameter reduction.

Alexander Holiday1, Mahdi Kooshkbaghi2, Juan M Bello-Rivas2, C William Gear1, Antonios Zagaris3, Ioannis G Kevrekidis1,2,4.   

Abstract

Large scale dynamical systems (e.g. many nonlinear coupled differential equations) can often be summarized in terms of only a few state variables (a few equations), a trait that reduces complexity and facilitates exploration of behavioral aspects of otherwise intractable models. High model dimensionality and complexity makes symbolic, pen-and-paper model reduction tedious and impractical, a difficulty addressed by recently developed frameworks that computerize reduction. Symbolic work has the benefit, however, of identifying both reduced state variables and parameter combinations that matter most (effective parameters, "inputs"); whereas current computational reduction schemes leave the parameter reduction aspect mostly unaddressed. As the interest in mapping out and optimizing complex input-output relations keeps growing, it becomes clear that combating the curse of dimensionality also requires efficient schemes for input space exploration and reduction. Here, we explore systematic, data-driven parameter reduction by means of effective parameter identification, starting from current nonlinear manifoldlearning techniques enabling state space reduction. Our approach aspires to extend the data-driven determination of effective state variables with the data-driven discovery of effective model parameters, and thus to accelerate the exploration of high-dimensional parameter spaces associated with complex models.

Entities:  

Keywords:  data driven perturbation theory; data mining; diffusion maps; model reduction; parameter sloppiness

Year:  2019        PMID: 31130740      PMCID: PMC6528681          DOI: 10.1016/j.jcp.2019.04.015

Source DB:  PubMed          Journal:  J Comput Phys        ISSN: 0021-9991            Impact factor:   3.553


  2 in total

1.  Coarse-scale PDEs from fine-scale observations via machine learning.

Authors:  Seungjoon Lee; Mahdi Kooshkbaghi; Konstantinos Spiliotis; Constantinos I Siettos; Ioannis G Kevrekidis
Journal:  Chaos       Date:  2020-01       Impact factor: 3.642

2.  Emergent Spaces for Coupled Oscillators.

Authors:  Thomas N Thiem; Mahdi Kooshkbaghi; Tom Bertalan; Carlo R Laing; Ioannis G Kevrekidis
Journal:  Front Comput Neurosci       Date:  2020-05-12       Impact factor: 2.380

  2 in total

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