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HYBRID MACHINE LEARNING MODEL FOR PREDICTIVE ANALYTICS AND DECISION MAKING

International Journal of Computer Science (IJCS) Published by SK Research Group of Companies (SKRGC)

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Abstract

Hybrid Machine Learning (HML) models have emerged as an effective solution for improving predictive analytics and intelligent decision-making across multiple domains such as healthcare, finance, manufacturing, and smart cities. Traditional machine learning algorithms often suffer from limitations related to scalability, accuracy, overfitting, and interpretability when applied independently. This research paper proposes a hybrid machine-learning framework that integrates supervised learning, unsupervised learning, and ensemble techniques to improve prediction accuracy and support robust decision-making. The study evaluates the proposed framework using performance metrics such as accuracy, precision, recall, F1-score, and computational efficiency. Experimental analysis demonstrates that the hybrid model significantly outperforms conventional machine learning approaches. The paper also discusses applications, challenges, and future enhancements in hybrid intelligent systems.

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Keywords

Hybrid Machine Learning, Predictive Analytics, Decision Making, Artificial Intelligence, Ensemble Learning, Deep Learning.

Image
  • Format Volume 14, Issue 1, No 28, 2026
  • Copyright All Rights Reserved ©2026
  • Year of Publication 2026
  • Author Aleena M A , Dr. Sangeetha Radhakrishnan
  • Reference IJCS-710
  • Page No 009-013

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