Literature DB >> 24051729

Linear latent force models using Gaussian processes.

Mauricio A Álvarez1, David Luengo, Neil D Lawrence.   

Abstract

Purely data-driven approaches for machine learning present difficulties when data are scarce relative to the complexity of the model or when the model is forced to extrapolate. On the other hand, purely mechanistic approaches need to identify and specify all the interactions in the problem at hand (which may not be feasible) and still leave the issue of how to parameterize the system. In this paper, we present a hybrid approach using Gaussian processes and differential equations to combine data-driven modeling with a physical model of the system. We show how different, physically inspired, kernel functions can be developed through sensible, simple, mechanistic assumptions about the underlying system. The versatility of our approach is illustrated with three case studies from motion capture, computational biology, and geostatistics.

Mesh:

Year:  2013        PMID: 24051729     DOI: 10.1109/TPAMI.2013.86

Source DB:  PubMed          Journal:  IEEE Trans Pattern Anal Mach Intell        ISSN: 0098-5589            Impact factor:   6.226


  3 in total

1.  Mechanistic Hierarchical Gaussian Processes.

Authors:  Matthew W Wheeler; David B Dunson; Sudha P Pandalai; Brent A Baker; Amy H Herring
Journal:  J Am Stat Assoc       Date:  2014-07       Impact factor: 5.033

2.  Global Optimization Employing Gaussian Process-Based Bayesian Surrogates.

Authors:  Roland Preuss; Udo Von Toussaint
Journal:  Entropy (Basel)       Date:  2018-03-16       Impact factor: 2.524

3.  Estimation of time-varying reproduction numbers underlying epidemiological processes: A new statistical tool for the COVID-19 pandemic.

Authors:  Hyokyoung G Hong; Yi Li
Journal:  PLoS One       Date:  2020-07-21       Impact factor: 3.240

  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.