spam is an R package for sparse matrix algebra with emphasis on a Cholesky factor-ization of sparse positive definite matrices. The implemantation of spam is based on the competing philosophical maxims to be competitively fast compared to existing tools and to be easy to use, modify and extend. The first is addressed by using fast Fortran routines and the second by assuring S3 and S4 compatibility. One of the features of spam is to exploit the algorithmic steps of the Cholesky factorization and hence to perform only a fraction of the workload when factorizing matrices with the same sparsity structure. Sim-ulations show that exploiting this break-down of the factorization results in a speed-up of about a factor 5 and memory savings of about ...
Sparse matrix computations arise in many scientific computing problems and for some (e.g.: iterative...
We present a new class of models for high-dimensional nonparametric regression and classification ca...
In the last decade, the demand for statistical and computation methods for data analysis that involv...
spam is an R package for sparse matrix algebra with emphasis on a Cholesky factorization of sparse p...
SparseM provides some basic R functionality for linear algebra with sparse matrices. Use of the pack...
SparseM provides some basic R functionality for linear algebra with sparse matrices. Use of the pack...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
We describe a simple random-sampling based procedure for producing sparse matrix approximations. Our...
International audienceThis paper considers elimination algorithms for sparse matrices over finite fi...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
Given a rectangular matrix with more columns than rows, find a base of linear combinations of the ro...
Sparsity plays a key role in machine learning for several reasons including interpretability. Interp...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
Today most real life applications require processing large amounts of data (i.e. ”Big Data”). The pa...
This paper describes two portable packages for general-purpose sparse matrix computations: SPARSKIT...
Sparse matrix computations arise in many scientific computing problems and for some (e.g.: iterative...
We present a new class of models for high-dimensional nonparametric regression and classification ca...
In the last decade, the demand for statistical and computation methods for data analysis that involv...
spam is an R package for sparse matrix algebra with emphasis on a Cholesky factorization of sparse p...
SparseM provides some basic R functionality for linear algebra with sparse matrices. Use of the pack...
SparseM provides some basic R functionality for linear algebra with sparse matrices. Use of the pack...
Abstract. Sparse matrix-vector multiplication is an important computational kernel that tends to per...
We describe a simple random-sampling based procedure for producing sparse matrix approximations. Our...
International audienceThis paper considers elimination algorithms for sparse matrices over finite fi...
The paper "Bringing Order to Sparsity: A Sparse Matrix Reordering Study on Multicore CPUs" compares ...
Given a rectangular matrix with more columns than rows, find a base of linear combinations of the ro...
Sparsity plays a key role in machine learning for several reasons including interpretability. Interp...
The Relevance Vector Machine (RVM) is a sparse approximate Bayesian kernel method. It provides full ...
Today most real life applications require processing large amounts of data (i.e. ”Big Data”). The pa...
This paper describes two portable packages for general-purpose sparse matrix computations: SPARSKIT...
Sparse matrix computations arise in many scientific computing problems and for some (e.g.: iterative...
We present a new class of models for high-dimensional nonparametric regression and classification ca...
In the last decade, the demand for statistical and computation methods for data analysis that involv...