Many quantum algorithms for numerical linear algebra assume black-box access to a block-encoding of the matrix of interest, which is a strong assumption when the matrix is not sparse. Kernel matrices, which arise from discretizing a kernel function $k(x,x')$, have a variety of applications in mathematics and engineering. They are generally dense and full-rank. Classically, the celebrated fast multipole method performs matrix multiplication on kernel matrices of dimension $N$ in time almost linear in $N$ by using the linear algebraic framework of hierarchical matrices. In light of this success, we propose a block-encoding scheme of the hierarchical matrix structure on a quantum computer. When applied to many physical kernel matrices, our met...
Many matrices in scientific computing, statistical inference, and machine learning exhibit sparse an...
Among matrix decomposition methods, the two factorized matrices obtained by Non-negative matrix fact...
The representation of data is of paramount importance for machine learning methods. Kernel methods a...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We consider the quantum implementations of two classical iterative solvers for a system of linear eq...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
Quantum algorithms for solving the Quantum Linear System (QLS) problem are among the most investigat...
Quantum algorithms for solving the Quantum Linear System (QLS) problem are among the most investigat...
Quantum control plays a key role in quantum technology, in particular for steer-ing quantum systems....
Most quantum algorithms offering speedups over classical algorithms are based on the three technique...
The LINPACK benchmark reports the performance of a computer for solving a system of linear equations...
The LINPACK benchmark reports the performance of a computer for solving a system of linear equations...
Many matrices in scientific computing, statistical inference, and machine learning exhibit sparse an...
Many matrices in scientific computing, statistical inference, and machine learning exhibit sparse an...
Among matrix decomposition methods, the two factorized matrices obtained by Non-negative matrix fact...
The representation of data is of paramount importance for machine learning methods. Kernel methods a...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We consider the quantum implementations of two classical iterative solvers for a system of linear eq...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
Quantum algorithms for solving the Quantum Linear System (QLS) problem are among the most investigat...
Quantum algorithms for solving the Quantum Linear System (QLS) problem are among the most investigat...
Quantum control plays a key role in quantum technology, in particular for steer-ing quantum systems....
Most quantum algorithms offering speedups over classical algorithms are based on the three technique...
The LINPACK benchmark reports the performance of a computer for solving a system of linear equations...
The LINPACK benchmark reports the performance of a computer for solving a system of linear equations...
Many matrices in scientific computing, statistical inference, and machine learning exhibit sparse an...
Many matrices in scientific computing, statistical inference, and machine learning exhibit sparse an...
Among matrix decomposition methods, the two factorized matrices obtained by Non-negative matrix fact...
The representation of data is of paramount importance for machine learning methods. Kernel methods a...