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Sparse grids are a popular tool for the numerical treatment of
high-dimensional problems. Where classical numerical discretization
schemes fail in more than three or four dimensions, sparse grids,
in their different flavors, are frequently the method of choice.
This volume of LNCSE presents selected papers from the proceedings
of the fifth workshop on sparse grids and applications, and
demonstrates once again the importance of this numerical
discretization scheme. The articles present recent advances in the
numerical analysis of sparse grids in connection with a range of
applications including uncertainty quantification, plasma physics
simulations, and computational chemistry, to name but a few.
This volume of LNCSE is a collection of the papers from the
proceedings of the third workshop on sparse grids and applications.
Sparse grids are a popular approach for the numerical treatment of
high-dimensional problems. Where classical numerical discretization
schemes fail in more than three or four dimensions, sparse grids,
in their different guises, are frequently the method of choice, be
it spatially adaptive in the hierarchical basis or via the
dimensionally adaptive combination technique. Demonstrating once
again the importance of this numerical discretization scheme, the
selected articles present recent advances on the numerical analysis
of sparse grids as well as efficient data structures. The book also
discusses a range of applications, including uncertainty
quantification and plasma physics.
Sparse grids are a popular tool for the numerical treatment of
high-dimensional problems. Where classical numerical discretization
schemes fail in more than three or four dimensions, sparse grids,
in their different flavors, are frequently the method of choice.
This volume of LNCSE presents selected papers from the proceedings
of the fourth workshop on sparse grids and applications, and
demonstrates once again the importance of this numerical
discretization scheme. The articles present recent advances in the
numerical analysis of sparse grids in connection with a range of
applications including computational chemistry, computational fluid
dynamics, and big data analytics, to name but a few.
Sparse grids have gained increasing interest in recent years for
the numerical treatment of high-dimensional problems. Whereas
classical numerical discretization schemes fail in more than three
or four dimensions, sparse grids make it possible to overcome the
curse of dimensionality to some degree, extending the number of
dimensions that can be dealt with. This volume of LNCSE collects
the papers from the proceedings of the second workshop on sparse
grids and applications, demonstrating once again the importance of
this numerical discretization scheme. The selected articles present
recent advances on the numerical analysis of sparse grids as well
as efficient data structures, and the range of applications extends
to uncertainty quantification settings and clustering, to name but
a few examples.
"
In the recent decade, there has been a growing interest in the
numerical treatment of high-dimensional problems. It is well known
that classical numerical discretization schemes fail in more than
three or four dimensions due to the curse of dimensionality. The
technique of sparse grids helps overcome this problem to some
extent under suitable regularity assumptions. This discretization
approach is obtained from a multi-scale basis by a tensor product
construction and subsequent truncation of the resulting
multiresolution series expansion. This volume of LNCSE is a
collection of the papers from the proceedings of the workshop on
sparse grids and its applications held in Bonn in May 2011. The
selected articles present recent advances in the mathematical
understanding and analysis of sparse grid discretization. Aspects
arising from applications are given particular attention.
Sparse grids are a popular tool for the numerical treatment of
high-dimensional problems. Where classical numerical discretization
schemes fail in more than three or four dimensions, sparse grids,
in their different flavors, are frequently the method of choice.
This volume of LNCSE presents selected papers from the proceedings
of the fourth workshop on sparse grids and applications, and
demonstrates once again the importance of this numerical
discretization scheme. The articles present recent advances in the
numerical analysis of sparse grids in connection with a range of
applications including computational chemistry, computational fluid
dynamics, and big data analytics, to name but a few.
This volume of LNCSE is a collection of the papers from the
proceedings of the third workshop on sparse grids and applications.
Sparse grids are a popular approach for the numerical treatment of
high-dimensional problems. Where classical numerical discretization
schemes fail in more than three or four dimensions, sparse grids,
in their different guises, are frequently the method of choice, be
it spatially adaptive in the hierarchical basis or via the
dimensionally adaptive combination technique. Demonstrating once
again the importance of this numerical discretization scheme, the
selected articles present recent advances on the numerical analysis
of sparse grids as well as efficient data structures. The book also
discusses a range of applications, including uncertainty
quantification and plasma physics.
Sparse grids have gained increasing interest in recent years for
the numerical treatment of high-dimensional problems. Whereas
classical numerical discretization schemes fail in more than three
or four dimensions, sparse grids make it possible to overcome the
“curse” of dimensionality to some degree, extending the number
of dimensions that can be dealt with. This volume of LNCSE collects
the papers from the proceedings of the second workshop on sparse
grids and applications, demonstrating once again the importance of
this numerical discretization scheme. The selected articles present
recent advances on the numerical analysis of sparse grids as well
as efficient data structures, and the range of applications extends
to uncertainty quantification settings and clustering, to name but
a few examples.
In the recent decade, there has been a growing interest in the
numerical treatment of high-dimensional problems. It is well known
that classical numerical discretization schemes fail in more than
three or four dimensions due to the curse of dimensionality. The
technique of sparse grids helps overcome this problem to some
extent under suitable regularity assumptions. This discretization
approach is obtained from a multi-scale basis by a tensor product
construction and subsequent truncation of the resulting
multiresolution series expansion. This volume of LNCSE is a
collection of the papers from the proceedings of the workshop on
sparse grids and its applications held in Bonn in May 2011. The
selected articles present recent advances in the mathematical
understanding and analysis of sparse grid discretization. Aspects
arising from applications are given particular attention.
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