Balanced k-Means Clustering on an Adiabatic Quantum Computer

08/10/2020
by   Davis Arthur, et al.
0

Adiabatic quantum computers are a promising platform for approximately solving challenging optimization problems. We present a quantum approach to solving the balanced k-means clustering training problem on the D-Wave 2000Q adiabatic quantum computer. Existing classical approaches scale poorly for large datasets and only guarantee a locally optimal solution. We show that our quantum approach better targets the global solution of the training problem, while achieving better theoretic scalability on large datasets. We test our quantum approach on a number of small problems, and observe clustering performance similar to the best classical algorithms.

READ FULL TEXT

page 5

page 6

page 8

research
08/05/2020

Adiabatic Quantum Linear Regression

A major challenge in machine learning is the computational expense of tr...
research
09/10/2019

Quantum Unsupervised and Supervised Learning on Superconducting Processors

Machine learning algorithms perform well on identifying patterns in many...
research
06/13/2017

Optimization by a quantum reinforcement algorithm

A reinforcement algorithm solves a classical optimization problem by int...
research
12/10/2018

q-means: A quantum algorithm for unsupervised machine learning

Quantum machine learning is one of the most promising applications of a ...
research
08/05/2020

QUBO Formulations for Training Machine Learning Models

Training machine learning models on classical computers is usually a tim...
research
01/26/2018

Reducing Binary Quadratic Forms for More Scalable Quantum Annealing

Recent advances in the development of commercial quantum annealers such ...
research
06/16/2022

Performance analysis of coreset selection for quantum implementation of K-Means clustering algorithm

Quantum computing is anticipated to offer immense computational capabili...

Please sign up or login with your details

Forgot password? Click here to reset