3.9 Article

Improving quantum genetic optimization through granular computing

Related references

Note: Only part of the references are listed.
Article Computer Science, Artificial Intelligence

D-NISQ: A reference model for Distributed Noisy Intermediate-Scale Quantum computers

Giovanni Acampora et al.

Summary: This paper introduces the concept of Distributed Noisy-Intermediate Scale Quantum (D-NISQ) as a reference computational model to design innovative frameworks for quantum devices to interact and solve complex problems collaboratively. Through two case studies, a multi-threaded implementation of the D-NISQ model demonstrates greater reliability in solving problems through quantum computation.

INFORMATION FUSION (2023)

Article Computer Science, Artificial Intelligence

Fuzzy Logic on Quantum Annealers

Amir Pourabdollah et al.

Summary: Quantum computation, utilizing quantum mechanics effects, is expected to have a significant impact on the field of computing and the application of fuzzy systems. This article introduces a novel representation of fuzzy sets and operators based on quadratic unconstrained binary optimization problems to implement fuzzy inference engines on quantum computers.

IEEE TRANSACTIONS ON FUZZY SYSTEMS (2022)

Article Computer Science, Information Systems

Implementing evolutionary optimization on actual quantum processors

Giovanni Acampora et al.

Summary: This study introduces a new evolutionary algorithm utilizing an actual quantum processor, which employs quantum phenomena to achieve significant speed-up in computation. By implementing quantum concepts such as quantum chromosome and entangled crossover, the proposed algorithm efficiently executes genetic evolution on quantum devices to converge towards proper sub-optimal solutions of a given optimization problem. The experimental results show that the synergy between quantum and evolutionary computation leads to a promising bio-inspired optimization strategy.

INFORMATION SCIENCES (2021)

Article Computer Science, Artificial Intelligence

Delay optimization for ternary fixed polarity Reed-Muller circuits based on multilevel adaptive quantum genetic algorithm

He Zhenxue et al.

Summary: This paper proposes a multilevel adaptive quantum genetic algorithm (MAQGA) for delay optimization of ternary fixed polarity Reed-Muller (FPRM) circuits, and introduces a delay optimization approach (DOA) based on a delay decomposition strategy. Experimental results demonstrate the effectiveness and superiority of the proposed methods in optimizing the delay of ternary FPRM circuits.

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS (2021)

Article Computer Science, Artificial Intelligence

Quantum inspired meta-heuristic approaches for automatic clustering of colour images

Alokananda Dey et al.

Summary: In this article, quantum inspired versions of two swarm based meta-heuristic algorithms were proposed for automatic clustering of colour images. The performance of the algorithms was evaluated through experiments on various images and cluster validity indices, and the parameters were tuned using Sobol's sensitivity analysis. The experimental results demonstrated the superiority of the proposed algorithms in various aspects.

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS (2021)

Article Computer Science, Artificial Intelligence

A survey on granular computing and its uncertainty measure from the perspective of rough set theory

Yunlong Cheng et al.

Summary: Granular computing is a method that uses information granules to solve complex problems, with rough sets being one of the main models that has been successfully applied in various fields. This paper surveys the main models, uncertainty measures, and applications of rough sets to demonstrate the basic ideas and principles of granular computing.

GRANULAR COMPUTING (2021)

Article Computer Science, Artificial Intelligence

Granular approach to data processing under probabilistic uncertainty

Andrzej Pownuk et al.

Summary: The algorithms for data processing under probabilistic uncertainty often require too much computation time. This study shows that processing uncertainty can be sped up by decomposing the original uncertainty into appropriate granules, even in situations where there is no natural decomposition.

GRANULAR COMPUTING (2021)

Review Computer Science, Information Systems

A Review of Quantum-Inspired Metaheuristics: Going From Classical Computers to Real Quantum Computers

Oscar H. Montiel Ross

IEEE ACCESS (2020)

Article Quantum Science & Technology

Soundness and completeness of quantum root-mean-square errors

Masanao Ozawa

NPJ QUANTUM INFORMATION (2019)

Article Computer Science, Artificial Intelligence

Optimization of granulation for fuzzy controllers of autonomous mobile robots using the Firefly Algorithm

Marylu L. Lagunes et al.

GRANULAR COMPUTING (2019)

Article Computer Science, Artificial Intelligence

A novel hybrid genetic algorithm with granular information for feature selection and optimization

Hongbin Dong et al.

APPLIED SOFT COMPUTING (2018)

Article Quantum Science & Technology

Quantum Computing in the NISQ era and beyond

John Preskill

QUANTUM (2018)

Review Multidisciplinary Sciences

Quantum machine learning

Jacob Biamonte et al.

NATURE (2017)

Article Computer Science, Artificial Intelligence

Granular computing: from granularity optimization to multi-granularity joint problem solving

Guoyin Wang et al.

GRANULAR COMPUTING (2017)

Article Computer Science, Artificial Intelligence

A study of granular computing in the agenda of growth of artificial neural networks

Mingli Song et al.

GRANULAR COMPUTING (2016)

Article Computer Science, Information Systems

Genetic interval neural networks for granular data regression

Mario G. C. A. Cimino et al.

INFORMATION SCIENCES (2014)