Alpha-Beta Hybrid Quantum Associative Memory Using Hamming Distance

Entropy (Basel). 2022 Jun 4;24(6):789. doi: 10.3390/e24060789.

Abstract

This work presents a quantum associative memory (Alpha-Beta HQAM) that uses the Hamming distance for pattern recovery. The proposal combines the Alpha-Beta associative memory, which reduces the dimensionality of patterns, with a quantum subroutine to calculate the Hamming distance in the recovery phase. Furthermore, patterns are initially stored in the memory as a quantum superposition in order to take advantage of its properties. Experiments testing the memory's viability and performance were implemented using IBM's Qiskit library.

Keywords: Alpha-Beta associative model; hamming distance; pattern recognition; quantum associative memory; quantum machine learning.

Grants and funding

This research received no external funding.