Multifidelity Information Fusion Algorithms for High-Dimensional Systems and Massive Data sets

We develop a framework for multifidelity information fusion and predictive inference in high-dimensional input spaces and in the presence of massive data sets. Hence, we tackle simultaneously the "big N" problem for big data and the curse of dimensionality in multivariate parametric proble...

Full description

Bibliographic Details
Main Authors: Venturi, Daniele (Author), Perdikaris, Paris (Contributor), Karniadakis, George E (Contributor)
Other Authors: Massachusetts Institute of Technology. Department of Mechanical Engineering (Contributor)
Format: Article
Language:English
Published: Society for Industrial and Applied Mathematics, 2017-05-24T18:50:06Z.
Subjects:
Online Access:Get fulltext
LEADER 01985 am a22002053u 4500
001 109316
042 |a dc 
100 1 0 |a Venturi, Daniele  |e author 
100 1 0 |a Massachusetts Institute of Technology. Department of Mechanical Engineering  |e contributor 
100 1 0 |a Perdikaris, Paris  |e contributor 
100 1 0 |a Karniadakis, George E  |e contributor 
700 1 0 |a Perdikaris, Paris  |e author 
700 1 0 |a Karniadakis, George E  |e author 
245 0 0 |a Multifidelity Information Fusion Algorithms for High-Dimensional Systems and Massive Data sets 
260 |b Society for Industrial and Applied Mathematics,   |c 2017-05-24T18:50:06Z. 
856 |z Get fulltext  |u http://hdl.handle.net/1721.1/109316 
520 |a We develop a framework for multifidelity information fusion and predictive inference in high-dimensional input spaces and in the presence of massive data sets. Hence, we tackle simultaneously the "big N" problem for big data and the curse of dimensionality in multivariate parametric problems. The proposed methodology establishes a new paradigm for constructing response surfaces of high-dimensional stochastic dynamical systems, simultaneously accounting for multifidelity in physical models as well as multifidelity in probability space. Scaling to high dimensions is achieved by data-driven dimensionality reduction techniques based on hierarchical functional decompositions and a graph-theoretic approach for encoding custom autocorrelation structure in Gaussian process priors. Multifidelity information fusion is facilitated through stochastic autoregressive schemes and frequency-domain machine learning algorithms that scale linearly with the data. Taking together these new developments leads to linear complexity algorithms as demonstrated in benchmark problems involving deterministic and stochastic fields in up to 10⁵ input dimensions and 10⁵ training points on a standard desktop computer. 
546 |a en_US 
655 7 |a Article 
773 |t SIAM Journal on Scientific Computing