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RETRACTED ARTICLE: A review on quantum computing and deep learning algorithms and their applications.

Fevrier Valdez1, Patricia Melin1

  • 1Tijuana Institute of Technology, Calzada Tecnologico S/N, 22414 Tijuana, BC Mexico.

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Summary
This summary is machine-generated.

This review explores Quantum Computing (QC) and Deep Learning (DL) applications in Computational Intelligence (CI). It highlights how quantum algorithms offer significant speedups for complex problems, complementing DL

Keywords:
ControlDeep learningFuzzy logicIntelligentMedicineNeural networksQuantum computingRobotic

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Area of Science:

  • Computational Intelligence
  • Quantum Computing
  • Deep Learning

Background:

  • Quantum algorithms leverage quantum mechanics for computational speedups.
  • Deep Learning models learn from data through layered processing, inspired by the human brain.
  • Both fields are advancing rapidly within the broader scope of Computational Intelligence.

Purpose of the Study:

  • To review and analyze the intersection of Quantum Computing and Deep Learning.
  • To identify key research works and applications in these domains.
  • To understand their combined potential within Computational Intelligence.

Main Methods:

  • Literature review of Quantum Computing and Deep Learning research.
  • Analysis of proposed Quantum Algorithms and Deep Learning architectures.
  • Synthesis of findings on their applications in Computational Intelligence.

Main Results:

  • Quantum algorithms demonstrate potential for exponential speedups over classical algorithms.
  • Deep Learning excels at pattern recognition and prediction from diverse data types.
  • Emerging applications showcase the synergy between QC and DL in CI.

Conclusions:

  • The integration of Quantum Computing and Deep Learning offers transformative potential for solving complex problems.
  • Further research is needed to fully realize the capabilities of these combined technologies.
  • This synergy is poised to drive significant advancements in Computational Intelligence.