In edge computing, suppressing data size is a challenge for machine learning models that perform complex tasks such as autonomous driving, in which computational resources (speed, memory size and power) are limited. Efficient lossy compression of matrix data has been introduced by decomposing it into the product of an integer and real matrices. However, its optimisation is difficult as it requires simultaneous optimisation of an integer and real variables. In this paper, we improve this optimisation by utilising recently developed black-box optimisation (BBO) algorithms with an Ising solver for integer variables. In addition, the algorithm can be used to solve mixed-integer programming problems that are linear and non-linear in terms of rea...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
We present a hybrid GPU-CPU implementation of a reordering strategy for per-muting elements to make ...
As nowadays Machine Learning (ML) techniques are generating huge data collections, the problem of h...
Black-box optimization has potential in numerous applications such as hyperparameter optimization in...
We propose a scheme for solving mixed-integer programming problems in which the optimization problem...
Huge data sets containing millions of training examples with a large number of attributes (tall fat ...
We present a robust, parts-based data compression algorithm, L21 Semi-Nonnegative Matrix Factorizati...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
Lightweight integer compression algorithms are frequently applied in in-memory database systems to t...
The Ising model is defined by an objective function using a quadratic formula of qubit variables. Th...
Despite the prominence of neural network approaches in the field of recommender systems, simple meth...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We consider the conjectured O(N2+) time complexity of multiplying any two N × N ma-trices A and B. O...
There has been a recent revolution in machine learning based on the following simple idea. Instead o...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
We present a hybrid GPU-CPU implementation of a reordering strategy for per-muting elements to make ...
As nowadays Machine Learning (ML) techniques are generating huge data collections, the problem of h...
Black-box optimization has potential in numerous applications such as hyperparameter optimization in...
We propose a scheme for solving mixed-integer programming problems in which the optimization problem...
Huge data sets containing millions of training examples with a large number of attributes (tall fat ...
We present a robust, parts-based data compression algorithm, L21 Semi-Nonnegative Matrix Factorizati...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
Lightweight integer compression algorithms are frequently applied in in-memory database systems to t...
The Ising model is defined by an objective function using a quadratic formula of qubit variables. Th...
Despite the prominence of neural network approaches in the field of recommender systems, simple meth...
Sparse matrix–vector multiplication (SpMV) is of singular importance in sparse linear algebra, which...
We apply the framework of block-encodings, introduced by Low and Chuang (under the name standard-for...
We consider the conjectured O(N2+) time complexity of multiplying any two N × N ma-trices A and B. O...
There has been a recent revolution in machine learning based on the following simple idea. Instead o...
Quantum computers are devices which allow the solution of problems unsolvable to their classical cou...
We present a hybrid GPU-CPU implementation of a reordering strategy for per-muting elements to make ...
As nowadays Machine Learning (ML) techniques are generating huge data collections, the problem of h...