Machine learning non-local correlations

08/21/2018
by   Askery Canabarro, et al.
0

The ability to witness non-local correlations lies at the core of foundational aspects of quantum mechanics and its application in the processing of information. Commonly, this is achieved via the violation of Bell inequalities. Unfortunately, however, their systematic derivation quickly becomes unfeasible as the scenario of interest grows in complexity. To cope with that, we propose here a machine learning approach for the detection and quantification of non-locality. It consists of an ensemble of multilayer perceptrons blended with genetic algorithms achieving a high performance in a number of relevant Bell scenarios. Our results offer a novel method and a proof-of-principle for the relevance of machine learning for understanding non-locality.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2022

A Locality-Aware Bruck Allgather

Collective algorithms are an essential part of MPI, allowing application...
research
10/23/2020

Classical logic, classical probability, and quantum mechanics

We give an overview and conceptual discussion of some of our results on ...
research
04/08/2018

Verifier Non-Locality in Interactive Proofs

In multi-prover interactive proofs, the verifier interrogates the prover...
research
05/28/2022

So3krates – Self-attention for higher-order geometric interactions on arbitrary length-scales

The application of machine learning methods in quantum chemistry has ena...
research
10/09/2019

Monogamy of Temporal Correlations: Witnessing non-Markovianity Beyond Data Processing

The modeling of natural phenomena via a Markov process — a process for w...
research
07/16/2023

A worldwide study on the geographic locality of Internet routes

The topology of the Internet and its geographic properties received sign...
research
01/14/2020

s-Step Orthomin and GMRES implemented on parallel computers

The Orthomin ( Omin ) and the Generalized Minimal Residual method ( GMRE...

Please sign up or login with your details

Forgot password? Click here to reset