Parametric Probabilistic Quantum Memory

01/11/2020
by   Rodrigo S. Sousa, et al.
0

Probabilistic Quantum Memory (PQM) is a data structure that computes the distance from a binary input to all binary patterns stored in superposition on the memory. This data structure allows the development of heuristics to speed up artificial neural networks architecture selection. In this work, we propose an improved parametric version of the PQM to perform pattern classification, and we also present a PQM quantum circuit suitable for Noisy Intermediate Scale Quantum (NISQ) computers. We present a classical evaluation of a parametric PQM network classifier on public benchmark datasets. We also perform experiments to verify the viability of PQM on a 5-qubit quantum computer.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/31/2020

Quantum One-class Classification With a Distance-based Classifier

Distance-based Quantum Classifier (DBQC) is a quantum machine learning m...
research
01/10/2022

EP-PQM: Efficient Parametric Probabilistic Quantum Memory with Fewer Qubits and Gates

Machine learning (ML) classification tasks can be carried out on a quant...
research
08/27/2018

Quantum enhanced cross-validation for near-optimal neural networks architecture selection

This paper proposes a quantum-classical algorithm to evaluate and select...
research
10/06/2021

QTN-VQC: An End-to-End Learning framework for Quantum Neural Networks

The advent of noisy intermediate-scale quantum (NISQ) computers raises a...
research
10/25/2022

Eigen Memory Tree

This work introduces the Eigen Memory Tree (EMT), a novel online memory ...
research
07/07/2023

Variational quantum regression algorithm with encoded data structure

Variational quantum algorithms (VQAs) prevail to solve practical problem...
research
01/17/2022

Transfer Learning in Quantum Parametric Classifiers: An Information-Theoretic Generalization Analysis

A key step in quantum machine learning with classical inputs is the desi...

Please sign up or login with your details

Forgot password? Click here to reset