Numerical integration is a basic step in the implementation of more complex numerical algorithms suitable, for example, to solve ordinary and partial differential equations. The straightforward extension of a one-dimensional integration rule to a multidimensional grid by the tensor product of the spatial directions is deemed to be practically infeasible beyond a relatively small number of dimensions, e.g., three or four. In fact, the computational burden in terms of storage and floating point operations scales exponentially with the number of dimensions. This phenomenon is known as the curse of dimensionality and motivated the development of alternative methods such as the Monte Carlo method. The tensor product approach can be very effectiv...
Special numerical techniques are already needed to deal with n × n matrices for large n. Tensor data...
We consider the solution of linear systems with tensor product structure using a GMRES algorithm. In...
In the present paper, we give a survey of the recent results and outline future prospects of the ten...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
In recent usage, quasi-Monte Carlo methods performed much better than the classical theory tells us....
A wide range of practical problems involve computing multi-dimensional integrations. However, in mos...
In the last decades, numerical simulation has experienced tremendous improvements driven by massive ...
In many applications that deal with high dimensional data, it is important to not store the high dim...
The numerical simulation of high-dimensional partial differential equations (PDEs) is a challenging ...
We consider the solution of linear systems with tensor product structure using a GMRES algorithm. In...
Special numerical techniques are already needed to deal with n × n matrices for large n. Tensor data...
We consider the solution of linear systems with tensor product structure using a GMRES algorithm. In...
In the present paper, we give a survey of the recent results and outline future prospects of the ten...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
The coming century is surely the century of high dimensional data. With the rapid growth of computat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
We present a brief survey on the modern tensor numerical methods for multidimensional stat...
In recent usage, quasi-Monte Carlo methods performed much better than the classical theory tells us....
A wide range of practical problems involve computing multi-dimensional integrations. However, in mos...
In the last decades, numerical simulation has experienced tremendous improvements driven by massive ...
In many applications that deal with high dimensional data, it is important to not store the high dim...
The numerical simulation of high-dimensional partial differential equations (PDEs) is a challenging ...
We consider the solution of linear systems with tensor product structure using a GMRES algorithm. In...
Special numerical techniques are already needed to deal with n × n matrices for large n. Tensor data...
We consider the solution of linear systems with tensor product structure using a GMRES algorithm. In...
In the present paper, we give a survey of the recent results and outline future prospects of the ten...