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Exploring Quantum Machine Learning Algorithms for Enhanced Data Classification and Clustering in Complex Systems - Integration with Gradient Boosting and K-means for Improved Performance

Mohan Babu, M. Arun, S. Pushparani, A. Muthukrishnan, N. Poongavanam

20247 citationsDOI

Abstract

This research focuses on the implementation of quantum machine learning with the classical models such as Gradient Boosting and K-means clustering for efficient classification and clustering of most complex datasets in advanced systems. Taking advantage of the large datasets that are handled by the qc, this work examines Quantum Support Vector Machines (QSVM), Quantum Boosting, and Quantum K-means. To compare the efficiency of these hybrid models three datasets - the healthcare, the financial, and the cyber-security datasets - are used. Our findings indicate that quantum optimization algorithms achieve better accuracy in clustering in comparison to the classical counterparts and are computationally faster. This work shows how quantum machine learning can lead to the enhancement of difficult data processing tasks, a major issue in the quantum computing domain, with specific reference to resources and high-dimensional data. The opportunity to integrate quantum and classical models successfully is the best basis for further developments in machine learning.

Topics & Concepts

Boosting (machine learning)Cluster analysisComputer scienceGradient boostingArtificial intelligenceMachine learningk-means clusteringQuantumAlgorithmData miningPhysicsRandom forestQuantum mechanicsQuantum Computing Algorithms and Architecture