Improving the Performance of Hybrid Models Using Machine Learning and Optimization Techniques

Authors

  • Himanshu Giroh Research Scholar, Department of Electrical Engineering, UIET, Maharshi, Dayanand University Rohtak Haryana
  • Vipin Kumar Assistant Professor Department of Electrical Engineering, UIET, Maharshi, Dayanand University Rohtak, Haryana
  • Gurdiyal Singh Assistant Professor Department of Electrical Engineering, UIET, Maharshi, Dayanand University Rohtak, Haryana

DOI:

https://doi.org/10.15379/ijmst.v10i2.3138

Keywords:

Hybrid Models, Machine Learning Algorithms, Optimization Techniques

Abstract

Hybrid models, which combine multiple machine learning algorithms or optimization techniques, have shown great promise in tackling complex real-world problems. The integration of diverse approaches can lead to enhanced performance, increased accuracy, and more robust predictions. In this paper, we explore various methods to improve the performance of hybrid models using machine learning and optimization techniques. We discuss the advantages of hybrid models, the challenges associated with their design and implementation, and present case studies to demonstrate their effectiveness in different domains. Hybrid models, which combine diverse machine learning techniques and optimization strategies, have emerged as a powerful approach for tackling complex problems and enhancing performance across various domains. This paper delves into the realm of improving hybrid model performance through the synergistic integration of machine learning and optimization techniques. By seamlessly amalgamating different models and leveraging optimization methodologies, hybrid models can achieve superior predictive accuracy, robustness, and generalization. The paper presents a comprehensive framework for enhancing hybrid model performance, encompassing key stages such as problem formulation, data collection, preprocessing, model selection, integration, and feature engineering. Additionally, it highlights the pivotal role of optimization techniques, ranging from hyperparameter tuning and gradient-based optimization to constraint optimization and multi-objective optimization. The paper emphasizes the importance of ensemble methods, elucidating their potential to further elevate hybrid model efficacy. Furthermore, the concept of interpretability and explain ability is explored, ensuring that the developed hybrid models remain intelligible and transparent, especially in critical decision-making scenarios. The iterative nature of refining hybrid models is discussed, stressing the significance of continuous experimentation and adaptation to achieve optimal outcomes. Through a cohesive synthesis of machine learning and optimization, this paper offers insights into how hybrid models can be harnessed to address intricate challenges in various domains. The presented framework serves as a guiding beacon for researchers and practitioners, facilitating the design, development, and deployment of hybrid models that push the boundaries of performance and innovation.

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Published

2023-08-10

How to Cite

[1]
H. . Giroh, V. . Kumar, and G. . Singh, “Improving the Performance of Hybrid Models Using Machine Learning and Optimization Techniques”, ijmst, vol. 10, no. 2, pp. 3396-3409, Aug. 2023.