12–17 Jun 2016
University of Ottawa
America/Toronto timezone
Welcome to the 2016 CAP Congress! / Bienvenue au congrès de l'ACP 2016!

Quantum Model for Machine Learning Applications

14 Jun 2016, 19:24
2m
SITE Atrium (University of Ottawa)

SITE Atrium

University of Ottawa

Poster (Student, Not in Competition) / Affiche (Étudiant(e), pas dans la compétition) Condensed Matter and Materials Physics / Physique de la matière condensée et matériaux (DCMMP-DPMCM) DCMMP Poster Session with beer / Session d'affiches, avec bière DPMCM

Speaker

Bohdan Kulchytskyy (University of Waterloo)

Description

The field of machine learning has been revolutionized by the recent improvements in the training of deep networks. Their architecture is based on a set of stacked layers of simpler modules. One of the most successful building blocks, known as a restricted Boltzmann machine, is an energetic model based on the classical Ising Hamiltonian. In our work, we investigate the benefits of quantum effects on the learning capacity of Boltzmann machines by extending its underlying Hamiltonian with a transverse field. For this purpose, we employ exact and stochastic training procedures on data sets with physical origins.

Primary author

Bohdan Kulchytskyy (University of Waterloo)

Co-authors

Dr Evgeny Andriyash (D-Wave Systems) Dr Mohammad Amin (D-Wave Systems) Prof. Roger Melko (University of Waterloo)

Presentation materials

There are no materials yet.