Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data

Introduction. The development of quantum computing and artificial intelligence necessitates the development of hybrid quantum-classical algorithms for solving complex computational problems. The relevance of the research is due to the need for new approaches to making creative AI decisions in condit...

Full description

Saved in:
Bibliographic Details
Main Authors: Vyacheslav Korolyov, Maksim Ogurtsov, Oleksandr Khodsinskyi
Format: Article
Language:English
Published: V.M. Glushkov Institute of Cybernetics 2025-03-01
Series:Кібернетика та комп'ютерні технології
Subjects:
Online Access:http://cctech.org.ua/13-vertikalnoe-menyu-en/711-abstract-25-1-11-arte
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849733624231886848
author Vyacheslav Korolyov
Maksim Ogurtsov
Oleksandr Khodsinskyi
author_facet Vyacheslav Korolyov
Maksim Ogurtsov
Oleksandr Khodsinskyi
author_sort Vyacheslav Korolyov
collection DOAJ
description Introduction. The development of quantum computing and artificial intelligence necessitates the development of hybrid quantum-classical algorithms for solving complex computational problems. The relevance of the research is due to the need for new approaches to making creative AI decisions in conditions of exhaustion of training samples. (QVA) based on weak measurements with fuzzy filtering of input data is a promising research direction. The article first proposes a quantum variational autoencoder (QVA) based on weak measurements, which expands the space of possible solutions due to quantum effects – qubit entanglement, superposition of states and information teleportation. A fundamentally important modification is the introduction of weak measurements, which provide information about the quantum system with minimal impact on its state. The purpose of the article is to improve AI through modeling of autoencoder algorithms using weak measurements and fuzzy logic. Results. For the first time, numerical simulation of KVA based on weak measurements with fuzzy filtering was performed on classical computers and cloud services. The quality of KVA reconstruction is comparable to classical autoencoders. The simulation was performed for a one-dimensional signal, since for the CIFAR-10 and MNIST training samples, the simulation requires more than 5 petabytes of RAM. The KVA runtime in Google Colab was approximately 40 seconds. Conclusions. The integration of the fuzzy filtering mechanism into the KVA structure expands the capabilities of processing distorted and incomplete data. Such a modification increases the model's resistance to thermal noise and input data artifacts, improving the quality of information compression. Fuzzy clustering allows the system to effectively operate with ambiguous situations under conditions of uncertainty. Computer simulations have shown that adapting the fuzzy membership function to the type of input data, increasing the number of latent variables, and selecting the learning rate of the neural network can improve the quality of the reconstruction of the input signal.
format Article
id doaj-art-e2bcdf8f56e649f69cdfca4e6ca97466
institution DOAJ
issn 2707-4501
2707-451X
language English
publishDate 2025-03-01
publisher V.M. Glushkov Institute of Cybernetics
record_format Article
series Кібернетика та комп'ютерні технології
spelling doaj-art-e2bcdf8f56e649f69cdfca4e6ca974662025-08-20T03:07:58ZengV.M. Glushkov Institute of CyberneticsКібернетика та комп'ютерні технології2707-45012707-451X2025-03-01110611710.34229/2707-451X.25.1.1110-34229-2707-451X-25-1-11Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input DataVyacheslav Korolyov0https://orcid.org/0000-0003-1143-5846Maksim Ogurtsov1https://orcid.org/0000-0002-6167-5111Oleksandr Khodsinskyi2https://orcid.org/0000-0003-4574-3628V.M. Glushkov Institute of Cybernetics of the NAS of Ukraine, KyivV.M. Glushkov Institute of Cybernetics of the NAS of Ukraine, KyivV.M. Glushkov Institute of Cybernetics of the NAS of Ukraine, KyivIntroduction. The development of quantum computing and artificial intelligence necessitates the development of hybrid quantum-classical algorithms for solving complex computational problems. The relevance of the research is due to the need for new approaches to making creative AI decisions in conditions of exhaustion of training samples. (QVA) based on weak measurements with fuzzy filtering of input data is a promising research direction. The article first proposes a quantum variational autoencoder (QVA) based on weak measurements, which expands the space of possible solutions due to quantum effects – qubit entanglement, superposition of states and information teleportation. A fundamentally important modification is the introduction of weak measurements, which provide information about the quantum system with minimal impact on its state. The purpose of the article is to improve AI through modeling of autoencoder algorithms using weak measurements and fuzzy logic. Results. For the first time, numerical simulation of KVA based on weak measurements with fuzzy filtering was performed on classical computers and cloud services. The quality of KVA reconstruction is comparable to classical autoencoders. The simulation was performed for a one-dimensional signal, since for the CIFAR-10 and MNIST training samples, the simulation requires more than 5 petabytes of RAM. The KVA runtime in Google Colab was approximately 40 seconds. Conclusions. The integration of the fuzzy filtering mechanism into the KVA structure expands the capabilities of processing distorted and incomplete data. Such a modification increases the model's resistance to thermal noise and input data artifacts, improving the quality of information compression. Fuzzy clustering allows the system to effectively operate with ambiguous situations under conditions of uncertainty. Computer simulations have shown that adapting the fuzzy membership function to the type of input data, increasing the number of latent variables, and selecting the learning rate of the neural network can improve the quality of the reconstruction of the input signal.http://cctech.org.ua/13-vertikalnoe-menyu-en/711-abstract-25-1-11-artequantum computingneural networkvariational autoencoderfuzzy logicweak measurements
spellingShingle Vyacheslav Korolyov
Maksim Ogurtsov
Oleksandr Khodsinskyi
Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
Кібернетика та комп'ютерні технології
quantum computing
neural network
variational autoencoder
fuzzy logic
weak measurements
title Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
title_full Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
title_fullStr Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
title_full_unstemmed Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
title_short Quantum Variational Autoencoder Based on Weak Measurements With Fuzzy Filtering of Input Data
title_sort quantum variational autoencoder based on weak measurements with fuzzy filtering of input data
topic quantum computing
neural network
variational autoencoder
fuzzy logic
weak measurements
url http://cctech.org.ua/13-vertikalnoe-menyu-en/711-abstract-25-1-11-arte
work_keys_str_mv AT vyacheslavkorolyov quantumvariationalautoencoderbasedonweakmeasurementswithfuzzyfilteringofinputdata
AT maksimogurtsov quantumvariationalautoencoderbasedonweakmeasurementswithfuzzyfilteringofinputdata
AT oleksandrkhodsinskyi quantumvariationalautoencoderbasedonweakmeasurementswithfuzzyfilteringofinputdata