Matrix factorization is one of the fundamental techniques for analyzing latent relationship between two entities. Especially, it is used for recommendation for its high accuracy. Efficient parallel SGD matrix factorization algorithms have been developed for large matrices to speed up the convergence of factorization. However, most of them are designed for a shared-memory environment thus fail to factorize a large matrix that is too big to fit in memory, and their performances are also unreliable when the matrix is skewed. This paper proposes a fast and robust parallel SGD matrix factorization algorithm, called MLGF-MF, which is robust to skewed matrices and runs efficiently on block-storage devices (e.g., SSD disks) as well as shared-memory...
Matrix factorization (or often called decomposition) is a frequently used kernel in a large number o...
The lack of efficient resilience solutions is expected to be a major problem for the coming exascale...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
Matrix factorization is known to be an effective method for recommender systems that are given only ...
Matrix Factorization (MF) has been widely applied in machine learning and data mining. Due to the la...
Matrix factorization is known to be an effective method for recommender systems that are given only ...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
This work introduces Divide-Factor-Combine (DFC), a parallel divide-and-conquer framework for noisy ...
Alternating least squares (ALS) has been proved to be an effective solver for matrix factorization i...
AbstractThis paper gives improved parallel methods for several exact factorizations of some classes ...
Our experimental results showed that block based algorithms for numerically intensive applications a...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
Matrix factorization is a common task underlying several machine learning applications such as recom...
13. ABSTRACT (Maximum 200 words) Abstract- this paper vk Ioo6at the problem of factoring large spars...
We investigate a parallelization strategy for dense matrix factorization (DMF) algorithms, using Ope...
Matrix factorization (or often called decomposition) is a frequently used kernel in a large number o...
The lack of efficient resilience solutions is expected to be a major problem for the coming exascale...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...
Matrix factorization is known to be an effective method for recommender systems that are given only ...
Matrix Factorization (MF) has been widely applied in machine learning and data mining. Due to the la...
Matrix factorization is known to be an effective method for recommender systems that are given only ...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
This work introduces Divide-Factor-Combine (DFC), a parallel divide-and-conquer framework for noisy ...
Alternating least squares (ALS) has been proved to be an effective solver for matrix factorization i...
AbstractThis paper gives improved parallel methods for several exact factorizations of some classes ...
Our experimental results showed that block based algorithms for numerically intensive applications a...
As Web 2.0 and enterprise-cloud applications have proliferated, data mining algorithms increasingly ...
Matrix factorization is a common task underlying several machine learning applications such as recom...
13. ABSTRACT (Maximum 200 words) Abstract- this paper vk Ioo6at the problem of factoring large spars...
We investigate a parallelization strategy for dense matrix factorization (DMF) algorithms, using Ope...
Matrix factorization (or often called decomposition) is a frequently used kernel in a large number o...
The lack of efficient resilience solutions is expected to be a major problem for the coming exascale...
This thesis presents a parallel algorithm for the direct LU factorization of general unsymmetric spa...