Sparse grid: Difference between revisions

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'''Sparse grids''' are numerical techniques to represent, integrate or interpolate high [[dimension]]al functions. They were originally developed by the [[Russia]]n [[mathematician]] [[Sergey A. Smolyak]], a student of [[Lazar Lyusternik]], and are based on a sparse tensor product construction. Computer algorithms for efficient implementations of such grids were later developed by [[Michael Griebel]] and [[Christoph Zenger]].
'''Sparse grids''' are numerical techniques to represent, integrate or interpolate high [[dimension]]al functions. They were originally developed by the [[Russia]]n [[mathematician]] [[Sergey A. Smolyak]], a student of [[Lazar Lyusternik]], and are based on a sparse tensor product construction. Computer algorithms for efficient implementations of such grids were later developed by [[Michael Griebel]], [[Christoph Zenger]], and [[Dirk Pflüger]].


== Curse of dimensionality ==
== Curse of dimensionality ==
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== Further reading ==
== Further reading ==
*{{cite journal |first1=D. |last1= Pflüger |first2= B. |last2= Peherstorfer |first3= H. |last3= Bungartz |title=Spatially adaptive sparse grids for high-dimensional data-driven problems |journal=Journal of Complexity |volume=26 |issue=5 |year=2010 |pages=508-522 |doi=10.1016/j.jco.2010.04.001 |url=https://www.zora.uzh.ch/id/eprint/142226/1/Scheidegger_Econometrica%24ECTA12216.pdf }}
*{{cite journal |first1=J. |last1=Brumm |first2=S. |last2=Scheidegger |title=Using Adaptive Sparse Grids to Solve High-Dimensional Dynamic Models |journal=[[Econometrica]] |volume=85 |issue=5 |year=2017 |pages=1575–1612 |doi=10.3982/ECTA12216 |url=https://www.zora.uzh.ch/id/eprint/142226/1/Scheidegger_Econometrica%24ECTA12216.pdf }}
*{{cite journal |first1=J. |last1=Brumm |first2=S. |last2=Scheidegger |title=Using Adaptive Sparse Grids to Solve High-Dimensional Dynamic Models |journal=[[Econometrica]] |volume=85 |issue=5 |year=2017 |pages=1575–1612 |doi=10.3982/ECTA12216 |url=https://www.zora.uzh.ch/id/eprint/142226/1/Scheidegger_Econometrica%24ECTA12216.pdf }}
*{{cite book |chapter-url=https://ins.uni-bonn.de/media/public/publication-media/sparse_grids_nutshell_code.pdf |first=Jochen |last=Garcke |chapter=Sparse Grids in a Nutshell |editor-last=Garcke |editor-first=Jochen |editor2-last=Griebel |editor2-first=Michael |editor2-link=Michael Griebel |title=Sparse Grids and Applications |publisher=Springer |isbn=978-3-642-31702-6 |year=2012 |pages=57–80 }}
*{{cite book |chapter-url=https://ins.uni-bonn.de/media/public/publication-media/sparse_grids_nutshell_code.pdf |first=Jochen |last=Garcke |chapter=Sparse Grids in a Nutshell |editor-last=Garcke |editor-first=Jochen |editor2-last=Griebel |editor2-first=Michael |editor2-link=Michael Griebel |title=Sparse Grids and Applications |publisher=Springer |isbn=978-3-642-31702-6 |year=2012 |pages=57–80 }}

Latest revision as of 20:50, 3 June 2025

Sparse grids are numerical techniques to represent, integrate or interpolate high dimensional functions. They were originally developed by the Russian mathematician Sergey A. Smolyak, a student of Lazar Lyusternik, and are based on a sparse tensor product construction. Computer algorithms for efficient implementations of such grids were later developed by Michael Griebel, Christoph Zenger, and Dirk Pflüger.

Curse of dimensionality

The standard way of representing multidimensional functions are tensor or full grids. The number of basis functions or nodes (grid points) that have to be stored and processed depend exponentially on the number of dimensions.

The curse of dimensionality is expressed in the order of the integration error that is made by a quadrature of level l, with Nl points. The function has regularity r, i.e. is r times differentiable. The number of dimensions is d.

|El|=O(Nlrd)

Smolyak's quadrature rule

Smolyak found a computationally more efficient method of integrating multidimensional functions based on a univariate quadrature rule Q(1). The d-dimensional Smolyak integral Q(d) of a function f can be written as a recursion formula with the tensor product.

Ql(d)f=(i=1l(Qi(1)Qi1(1))Qli+1(d1))f

The index to Q is the level of the discretization. If a 1-dimension integration on level i is computed by the evaluation of O(2i) points, the error estimate for a function of regularity r will be |El|=O(Nlr(logNl)(d1)(r+1))

Further reading

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External links

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